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Collaborative Navigation in Transitional Environments By Dorota A. Grejner-Brzezinska, J.N. (Nikki) Markiel, Charles K. Toth and Andrew Zaydak INNOVATION INSIGHTS by Richard Langley COLLABORATION,  n. /kəˌlæbəˈreɪʃən/, n. of action. United labour, co-operation; esp. in literary, artistic, or scientific work — according to the Oxford English Dictionary. Collaboration is something we all practice, knowingly or unknowingly, even in our everyday lives. It generally results in a more productive outcome than acting individually. In scientific and engineering circles, collaboration in research is extremely common with most published papers having multiple authors, for example. The term collaboration can be applied not only to the endeavors of human beings or other living creatures but also to inanimate objects, too. Researchers have developed systems of miniaturized robots and unmanned vehicles that operate collaboratively to complete a task. These platforms must navigate as part of their functions and this navigation can often be made more continuous and accurate if each individual platform navigates collaboratively in the group rather than autonomously. This is typically achieved by exchanging sensor measurements by some kind of short-range wireless technology such as Wi-Fi, ultra-wide band, or ZigBee, a suite of communication protocols for small, low-power digital radios based on an Institute of Electrical and Electronics Engineers’ standard for personal area networks. A wide variety of navigation sensors can be implemented for collaborative navigation depending on whether the system is designed by outdoor use, for use inside buildings, or for operations in a wide variety of environments. In addition to GPS and other global navigation satellite systems, inertial measurement units, terrestrial radio-based navigation systems, laser and acoustic ranging, and image-based systems can be used. In this month’s article, a team of researchers at The Ohio State University discusses a system under development for collaborative navigation in transitional environments — environments in which GPS alone is insufficient for continuous and accurate navigation. Their prototype system involves a land-based deployment vehicle and a human operator carrying a personal navigator sensor assembly, which initially navigate together before the personal navigator transitions to an indoor environment. This system will have multiple applications including helping first responders to emergencies. Read on. “Innovation” is a regular feature that discusses advances in GPS technology andits applications as well as the fundamentals of GPS positioning. The column is coordinated by Richard Langley of the Department of Geodesy and Geomatics Engineering, University of New Brunswick. He welcomes comments and topic ideas. To contact him, see the “Contributing Editors” section on page 6. Collaborative navigation is an emerging field where a group of users navigates together by exchanging navigation and inter-user ranging information. This concept has been considered a viable alternative for GPS-challenged environments. However, most of the developed systems and approaches are based on fixed types and numbers of sensors per user or platform (restricted in sensor configuration) that eventually leads to a limitation in navigation capability, particularly in mixed or transition environments. As an example of an applicable scenario, consider an emergency crew navigating initially in a deployment vehicle, and, when subsequently dispatched, continuing in collaborative mode, referring to the navigation solution of the other users and vehicles. This approach is designed to assure continuous navigation solution of distributed agents in transition environments, such as moving between open areas, partially obstructed areas, and indoors when different types of users need to maintain high-accuracy navigation capability in relative and absolute terms. At The Ohio State University (OSU), we have developed systems that use multiple sensors and communications technologies to investigate, experimentally, the viability and performance attributes of such collaborative navigation. For our experiments, two platforms, a land-based deployment vehicle and a human operator carrying a personal navigator (PN) sensor assembly, initially navigate together before the PN transitions to the indoor environment. In the article, we describe the concept of collaborative navigation, briefly describe the systems we have developed and the algorithms used, and report on the results of some of our tests. The focus of the study being reported here is on the environment-to-environment transition and indoor navigation based on 3D sensor imagery, initially in post-processing mode with a plan to transition to real time. The Concept Collaborative navigation, also referred to as cooperative navigation or positioning, is a localization technique emerging from the field of wireless sensor networks (WSNs). Typically, the nodes in a WSN can communicate with each other using wireless communications technology based on standards, such as Zigbee/IEEE 802.15.4. The communication signals in a WSN are used to derive the inter-nodal distances across the network. Then, the collaborative navigation solution is formed by integrating the inter-nodal range measurements among nodes (users) in the network using a centralized or decentralized Kalman filter, or a least-squares-based approach. A paradigm shift from single to multi-sensor to multi-platform navigation is illustrated conceptually in Figure 1. While conventional sensor integration and integrated sensor systems are commonplace in navigation, sensor networks of integrated sensor systems are a relatively new development in navigation. Figure 2 illustrates the concept of collaborative navigation with emphasis on transitions between varying environments. In actual applications, example networks include those formed by soldiers, emergency crews, and formations of robots or unmanned vehicles, with the primary objective of achieving a sustained level of sufficient navigation accuracy in GPS-denied environments and assuring seamless transition among sensors, platforms, and environments. Figure 1. Paradigm shift in sensor integration concept for navigation. Figure 2. Collaborative navigation and transition between varying environments. Field Experiments and Methodology A series of field experiments were carried out in the fall of 2011 at The Ohio State University (OSU), and in the spring of 2012 at the Nottingham Geospatial Institute of the University of Nottingham, using the updated prototype of the personal navigator developed earlier at the OSU Satellite Positioning and Inertial Navigation Laboratory, and land-based multisensory vehicles. Note that the PN prototype is not a miniaturized system, but rather a sensor assembly put together using commercial off-the-shelf components for demonstration purposes only. The GPSVan (see Figure 3), the OSU mobile research navigation and mapping platform, and the recently upgraded OSU PN prototype (see Figure 4) jointly performed a variety of maneuvers, collecting data from multiple GPS receivers, inertial measurement units (IMUs), imaging sensors, and other devices. Parts of the collected data sets have been used for demonstrating the performance of navigation indoors and in the transition between environments, and it is this aspect of our experiments that will be discussed in the present article. Figure 3. Land vehicle, OSU GPSVan. Figure 4. Personal navigator sensor assembly. The GPSVan was equipped with navigation, tactical, and microelectromechanical systems (MEMS)-grade IMUs, installed in a two-level rigid metal cage, and the signals from two GPS antennas, mounted on the roof, were shared among multiple geodetic-grade dual-frequency GPS receivers. In addition, odometer data were logged, and optical imagery was acquired in some of the tests. The first PN prototype system, developed in 2006–2007, used GPS, IMU, a digital barometer, a magnetometer compass, a human locomotion model, and 3D active imaging sensor, Flash LIDAR (an imaging light detection and ranging system using rapid laser pulses for subject illumination). Recently, the design was upgraded to include 2D/3D imaging sensors to provide better position and attitude estimates indoors, and to facilitate transition between outdoor and indoor environments. Consequently, the current configuration allows for better distance estimation among platforms, both indoors and outdoors, as well as improving the navigation and tracking performance in general. The test area where data were acquired to support this study, shown in Figure 5, includes an open parking lot, moderately vegetated passages, a narrow alley between buildings, and a one-storey building for indoor navigation testing. The three typical scenarios used were: 1)    Sensor/platform calibration: GPSVan and PN are connected and navigate together. 2)    Both platforms moved closely together, that is, the GPSVan followed the PN’s trajectory. 3)    Both platforms moved independently. Image-Based Navigation The sensor of interest for the study reported here is an image sensor that actually includes two distinct data streams: a standard intensity image and a 3D ranging image, see Figure 6. The unit consists primarily of a 640 × 480 pixel array of infrared detectors. The operational range of the sensor is 0.8–10 meters, with a range resolution of 1 centimeter at a 2-meter distance. Figure 6. PN captured 3D image sequence from inside the building. In this study, the image-based navigation (no IMU) was considered. To overcome this limitation, the intensity images acquired simultaneously with the range data by the unit were leveraged to provide crucial information. The two intensity images were processed utilizing the Scale Invariant Feature Transform (SIFT) algorithm to identify matching features between the pair of 2D intensity images. The SIFT algorithm has been primarily applied to 1D and 2D imagery to date; the authors are not aware of any research efforts to apply SIFT to 3D datasets for the expressed purpose of positioning. Analysis at our laboratory supported well-published results regarding the exceptional performance of SIFT with respect to both repeatability and extraction of the feature content. The algorithm is remarkably robust to most image corruption schema, although white noise above 5 percent does appear to be the primary weakness of the algorithm. The algorithm suffers in three critical areas with respect to providing a 3D positioning solution. First, the algorithm is difficult to scale in terms of the number of descriptive points; that is, the algorithm quickly becomes computationally intractable for a large number (>5,000) of pixels. Secondly, the matching process is not unique; it is exceptionally feasible for the algorithm to match a single point in one image to multiple points in another image. Finally, since the algorithm loses spatial positioning capabilities to achieve the repeatability, the ability to utilize matching features for triangulation or trilateration becomes impaired. Owing to the noted issues, SIFT was not found to be a suitable methodology for real-time positioning based on 3D Flash LIDAR datasets. Despite these drawbacks, the intensity images offer the only available sensor input beyond the 3D ranging image. As such, the SIFT methodology provides what we believe to be a “best in class” algorithmic approach for matching 2D intensity images. The necessity of leveraging the intensity images will be apparent shortly, as the schema for deriving platform position is explained. The algorithm has been developed and implemented by the second author (see Further Reading for details). The algorithm utilizes eigenvector “signatures” for point features as a means to facilitate matching. The algorithm is comprised of four steps: 1)    Segmentation 2)    Coordinate frame transformation 3)    Feature matching 4)    Position and orientation determination. The algorithm utilizes the eigenvector descriptors to merge points likely to belong to a surface and identify the pixels corresponding to transitions between surfaces. Utilizing an initial coarse estimate from the IMU system, the results from the previous frame are transformed into the current coordinate reference frame by means of a Random Sampling Consensus or RANSAC methodology. Matching of static transitional pixels is accomplished by comparing eigenvector “signatures” within a constrained search window. Once matching features are identified and determined to be static, the closed form quaternion solution is utilized to derive the position and orientation of the acquisition device, and the result updates the inertial system in the same manner as a GPS receiver within the common GPS/IMU integration. The algorithm is unique in that the threshold mechanisms at each step are derived from the data itself, rather than relying upon a-priori limits. Since the algorithm only utilizes transitional pixels for matching, a significant reduction in dimensionality is generally accomplished and facilitates implementation on larger data frames. The key point in this overview is the need to provide coarse positioning information to the 3D matching algorithm to constrain the search space for matching eigenvector signatures. Since the IMU data were not available, the matching SIFT features from the intensity images were correlated with the associated range pixel measurements, and these range measurements were utilized in Horn’s Method (see Further Reading) to provide the coarse adjustment between consecutive range image frames. The 3D-range-matching algorithm described above then proceeds normally. The use of SIFT to provide the initial matching between the images entails the acceptance of several critical issues, beyond the limitations previously discussed. First, since the SIFT algorithm is matching 2D features on the intensity image; there is no guarantee that the matched features represent static elements in the field of view. As an example, SIFT can easily “match” the logo on a shirt worn by a moving person; since the input data will include the position of non-static elements, the resulting coarse adjustment may possess very large biases (in position). If these biases are significant, constraining the search space may be infeasible, resulting in either the inability to generate eigenvector matches (worst case) or a longer search time (best case). Since the 3D-range-matching algorithm checks the two range images for consistency before the matching process begins, this can be largely mitigated in implementation. Secondly, the SIFT features are located with sub-pixel location, thus the correlation to the range pixel image will inherently possess an error of ± 1 pixel (row and column). The impact of this error is that range pixels utilized to facilitate the coarse adjustment may in fact not be correct; the correct range pixel to be matched may not be the one selected. This will result in larger errors during the initial (coarse) adjustment process. Third, the uncertainty of the coarse adjustment is not known, so a-priori estimates of the error ellipse must be made to establish the eigenvector search space. The size and extent of these error ellipses is not defined on-the-fly by the data, which reduces one of the key elements of the 3D matching algorithm. Fourth, the limited range of the image sensor results in a condition where intensity features have no associated range measurement (the feature is out of range for the range device). This reduces the effective use of SIFT features for coarse alignment. However, using the intensity images does demonstrate the ability of the 3D-range-matching algorithm to generically utilize coarse adjustment information and refine the result to provide a navigation solution. Data Analysis In the experiment selected for discussion in this article, initially, the PN was initially riding in the GPSVan. After completing several loops in the parking lot (the upper portion of Figure 5), the PN then departed the vehicle and entered the building (see Figure 7), exited the facility, completed a trajectory around the second building (denoted as “mixed area” in Figure 5), and then returned to the parking lot. Figure 7. Building used as part of the test trajectory for indoor and transition environment testing; yellow line: nominal personal navigator indoor trajectories; arrows: direction of personal navigator motion inside the building; insert: reconstructed trajectory section, based on 3D image-based navigation. While minor GPS outages can occur under the canopy of trees, the critical portion of the trajectory is the portion occurring inside the building since the PN platform will be unable to access the GPS signal during this portion of the trajectory. Our efforts are therefore focused on providing alternative methods for positioning to bridge this critical gap. Utilizing the combined intensity images (for coarse adjustment via SIFT) and the 3D ranging data, a trajectory was derived for travel inside the building at the OSU Supercomputing Facility. There is a finite interval between exiting the building and recovery of GPS signal lock during which the range acquisition was not available; thus the total extent of travel distance during GPS signal outage is not precisely identical to the travel distance where 3D range solutions were utilized for positioning. We estimate the distance from recovery of GPS signals to the last known 3D ranging-derived position to be approximately 3 meters. Based upon this estimate, the travel distance inside the building should be approximately 53.5 meters (forward), 9.5 meters (right), and 0.75 meters (vertical). Based upon these estimates, the total misclosure based upon 3D range-derived positions is provided in Table 1. The asterisk in the third row indicates the estimated nature of these values. Table 1. Approximate positional results for the OSU Supercomputing Facility trajectory. The average positional uncertainty reflects the relative, frame-to-frame error reported by the algorithm during the indoor trajectory. This includes both IMU and 3D ranging solutions. The primary reason for the rather large misclosure in the forward and vertical directions is the result of three distinct issues. First, the image ranging sensor has a limited range; during certain portions of the trajectory the sensor is nearly “blind” due to lack of measurable features within the range. During this period, the algorithm must default to the IMU data, which is known to be suspect, as previously discussed. Secondly, the correlation between SIFT features and range measurement pixels can induce errors, as discussed above. Third, the 3D range positions and the IMU data were not integrated in this demonstration; the range positions were used to substitute for the lost GPS signals and the IMU was drifting. Resolving this final issue would, at a minimum, reduce the IMU drift error and improve the overall solution. A follow-up study conducted at a different facility was completed using the same platform and methodology. In this study, a complete traverse was completed indoors forming a “box” or square trajectory, which returned to the original entrance point. A plot of the trajectory results is provided in Figure 8. The misclosure is less than four meters with respect to both the forward (z) and right (x) directions. While similar issues exist with IMU drift (owing to lack of tight integration with the ranging data), a number of problems between the SIFT feature/range pixel correlation portion of the algorithm are evident; note the large “clumps’ of data points, where the algorithm struggles to reconcile the motions reported by the coarse (SIFT-derived) position and the range-derived position. Figure 8. Indoor scenario: square (box) trajectory. Conclusions As demonstrated in this paper, the determination of position based upon 3D range measurements can be seen to have particular potential benefit for the problem of navigation during periods of operation in GPS-denied environments. The experiment demonstrates several salient points of use in our ongoing research activities. First, the effective measurement range of the sensor is paramount; the trivial (but essential) need to acquire data is critical to success. A major problem was the presence of matching SIFT features but no corresponding range measurement. Second, orientation information is just as critical as position; the lack of this information significantly extended the time required to match features (via eigenvector signatures). Third, there is a critical need for the sensor to scan not only forward (along the trajectory) but also right/left and up/down. Obtaining features in all axes would support efforts to minimize IMU drift, particularly in the vertical. Alternatively, a wider field of view could conceivably accomplish the same objective. Finally, the algorithm was not fully integrated as a substitute for GPS positioning and the IMU was free to drift. Since the 3D ranging algorithm cannot guarantee a solution for all epochs, accurate IMU positioning is critical to bridge these outages. Fully integrating the 3D ranging solution with a GPS/IMU/3D schema would significantly reduce positional errors and misclosure. Our study indicates that leveraging 3D ranging images to achieve indoor relative (frame-to-frame) positioning shows great promise. The utilization of SIFT to match intensity images was an unfortunate necessity dictated by data availability; the method is technically feasible but our efforts would suggest there are significant drawbacks to this application, both in terms of efficiency and positional accuracy. It would be better to use IMU data with orientation solutions to derive the best possible solution. Our next step is the full integration within the IMU to enable 3D ranging solutions to update the ongoing trajectory, which we believe will reduce the misclosure and provide enhanced solutions supporting autonomous (or semi-autonomous) navigation. Acknowledgments This article is based on the paper “Cooperative Navigation in Transitional Environments,” presented at presented at PLANS 2012, the Institute of Electrical and Electronics Engineers / Institute of Navigation Position, Location and Navigation Symposium held in Myrtle Beach, South Carolina, April 23–26, 2012. Manufacturers The equipment used for the experiments discussed in this article included a NovAtel Inc. SPAN system consisting of a NovAtel OEMV GPScard, a Honeywell International Inc. HG1700 Ring Laser Gyro IMU, a Microsoft Xbox Kinect 3D imaging sensor, and a Casio Computer Co., Ltd. Exilim EX-H20G Hybrid-GPS digital camera. DOROTA GREJNER-BRZEZINSKA is a professor and leads the Satellite Positioning and Inertial Navigation (SPIN) Laboratory at OSU, where she received her M.S. and Ph.D. degrees in geodetic science. J.N. (NIKKI) MARKIEL is a lead geophysical scientist at the National Geospatial-Intelligence Agency. She obtained her Ph.D. in geodetic engineering at OSU. CHARLES TOTH is a senior research scientist at OSU’s Center for Mapping. He received a Ph.D. in electrical engineering and geoinformation sciences from the Technical University of Budapest, Hungary. ANDREW ZAYDAK is a Ph.D. candidate in geodetic engineering at OSU. FURTHER READING ◾ The Concept of Collaborative Navigation “The Network-based Collaborative Navigation for Land Vehicle Applications in GPS-denied Environment” by J-K. Lee, D.A. Grejner-Brzezinska and C. Toth in the Royal Institute of Navigation Journal of Navigation; in press. “Positioning and Navigation in GPS-challenged Environments: Cooperative Navigation Concept” by D.A. Grejner-Brzezinska, J-K. Lee and C. K. Toth, presented at FIG Working Week 2011, Marrakech, Morocco,  May 18-22, 2011. “Network-Based Collaborative Navigation for Ground-Based Users in GPS-Challenged Environments” by J-K. Lee, D. Grejner-Brzezinska, and C.K. Toth in Proceedings of ION GNSS 2010, the 23rd International Technical Meeting of the Satellite Division of The Institute of Navigation, Portland, Oregon, September 21-24, 2010, pp. 3380-3387. ◾ Sensors Supporting Collaborative Navigation “Challenged Positions: Dynamic Sensor Network, Distributed GPS Aperture, and Inter-nodal Ranging Signals” by D.A. Grejner-Brzezinska, C.K. Toth, J. Gupta, L. Lei, and X. Wang in GPS World, Vol. 21, No. 9, September 2010, pp. 35-42. “Positioning in GPS-challenged Environments: Dynamic Sensor Network with Distributed GPS Aperture and Inter-nodal Ranging Signals” by D.A. Grejner-Brzezinska, C. K. Toth, L. Li, J. Park, X. Wang, H. Sun, I.J. Gupta, K. Huggins and Y. F. Zheng (2009): in Proceedings of ION GNSS 2009, the 22nd International Technical Meeting of the Satellite Division of The Institute of Navigation, Savannah, Georgia, September 22-25, 2009, pp. 111–123. “Separation of Static and Non-Static Features from Three Dimensional Datasets: Supporting Positional Location in GPS Challenged Environments – An Update” by J.N. Markiel, D. Grejner-Brzezinska, and C. Toth in Proceedings of ION GNSS 2007, the 20th International Technical Meeting of the Satellite Division of The Institute of Navigation, Fort Worth, Texas, September 25-28, 2007, pp. 60-69. ◾ Personal Navigation “Personal Navigation: Extending Mobile Mapping Technologies Into Indoor Environments” by D. Grejner-Brzezinska, C. Toth, J. Markiel, and S. Moafipoor in Boletim De Ciencias Geodesicas, Vol. 15, No. 5, 2010, pp. 790-806. “A Fuzzy Dead Reckoning Algorithm for a Personal Navigator” by S. Moafipoor, D.A. Grejner-Brzezinska, and C.K. Toth, in Navigation, Vol. 55, No. 4, Winter 2008, pp. 241-254. “Quality Assurance/Quality Control Analysis of Dead Reckoning Parameters in a Personal Navigator” by S. Moafipoor, D. Grejner-Brzezinska, C.K. Toth, and C. Rizos in Location Based Services & TeleCartography II: From Sensor Fusion to Context Models, G. Gartner and K. Rehrl (Eds.), Lecture Notes in Geoinformation & Cartography, Springer-Verlag, Berlin and Heidelberg, 2008, pp. 333-351. “Pedestrian Tracking and Navigation Using Adaptive Knowledge System Based on Neural Networks and Fuzzy Logic” by S. Moafipoor, D. Grejner-Brzezinska, C.K. Toth, and C. Rizos in Journal of Applied Geodesy, Vol. 1, No. 3, 2008, pp. 111-123. ◾ Horn’s Method “Closed-form Solution of Absolute Orientation Using Unit Quaternions” by B.K.P. Horn in Journal of the Optical Society of America, Vol. 4, No. 4, April 1987, p. 629-642.

gps,xmradio,4g jammer headphones ii

47µf30pf trimmer capacitorledcoils 3 turn 24 awg,apple a1070 w008a130 ac adapter 13vdc 0.62a usb 100-240vac power.sony ac-l 200d ac adapter 8.4vdc 1.5a 4x6mm used for digital cam.compaq adp-50sb ac dc adapter 18.5v 2.8a power supply,cbm 31ad ac adapter 24vdc 1.9a used 3 pin din connector,replacement 324816-001 ac adapter 18.5v 4.9a used.sony bc-cs2a ni-mh battery charger used 1.4vdc 400max2 160max2 c,condor a9-1a ac adapter 9vac 1a 2.5x5.5mm ~(~) 1000ma 18w power,there are many methods to do this.frequency counters measure the frequency of a signal,the present circuit employs a 555 timer,ge tl26511 0200 rechargeable battery 2.4vdc 1.5mah for sanyo pc-.samsung hsh060abe ac adapter 11-30v dc used portable hands-free.skil 2607225299 ac adapter smartcharge system 7vdc 250ma used,all these project ideas would give good knowledge on how to do the projects in the final year,mobile phone jammer market size 2021 by growth potential.fujitsu fpcbc06 ac adapter 16v dc 35w used 2.5 x 5.4 x 12.1 mm t,delta adp-65hb bb ac adapter 19vdc 3.42a used-(+) 2.5x5.5mm 100-,d-link van90c-480b ac adapter 48vdc 1.45a -(+) 2x5.5mm 100-240va.dura micro pa-215 ac adapter 12v 1.8a 5v 1.5a dual voltage 4pins,iluv dsa-31s feu 5350 ac adapter 5.3v dc 0.5a used 2x5x6.2mm 8pi,compaq ppp003s ac adapter 18.5vdc 2.7a -(+) 1.5x4.75cm 100-240va.delta eadp-20tb b ac adapter 5vdc 4a used -(+) 1.5x4mm motorola.energizer pl-6378 ac dc adapter5v dc 1a new -(+) 1.7x4x8.1mm 9.ryobi 1400666 charger 14vdc 2a 45w for cordless drill 1400652 ba,all mobile phones will automatically re- establish communications and provide full service,vivanco tln 3800 xr ac adapter 5vdc 3800ma used 2.5 x 5.4 x 12 m,eng epa-121da-05a ac adapter 5v 2a used -(+) 1.5x4mm round barre,jsd jsd-2710-050200 ac adapter 5v dc 2a used 1.7x4x8.7mm,compaq ppp003 series adp-50ub ac adapter 18.5v 2.7a.hp adp-12hb ac adapter 12vdc 1a used -(+) 0.8x3.4 x 5.4 x 11mm 9,spy mobile phone jammer in painting,mw41-1200600 ac adapter 12vdc 600ma used -(+) 2x5.5x9mm round ba,sanyo nc-455 ac adapter 1.2vdc 100ma used cadinca battery charge,delta adp-15hb rev b ac adapter 12v 1.25a used 3 x 5.5 x 11mm.yardworks 29310 ac adapter 24vdc used battery charger,li shin lse0202c1990 ac adapter 19vdc 4.74a used -(+) screw wire,logitech u090020d12 ac adapter 9vdc 200ma - ---c--- + used 1.5 x.this project shows the control of appliances connected to the power grid using a pc remotely,oem ads18b-w120150 ac adapter 12vdc 1.5a -(+)- 2.5x5.5mm i.t.e.,such vehicles and trailers must be parked inside the garage.kensington k33404us ac adapter 16v 5.62a 19vdc 4.74a 90w power,the jammer transmits radio signals at specific frequencies to prevent the operation of cellular and portable phones in a non-destructive way.these jammers include the intelligent jammers which directly communicate with the gsm provider to block the services to the clients in the restricted areas.the complete system is integrated in a standard briefcase,toshiba pa3743e-1ac3 ac adapter 19vdc 1.58a power supply adp-30j.netbit dsc-51fl 52100 ac adapter 5v 1a switching power supply.ching chen wde-101cdc ac dc adapter 12v 0.8a power supply,liteon hp ppp009l ac adapter 18.5v dc 3.5a 65w power supply,the output of that circuit will work as a jammer,kodak hp-a0601r3 ac adapter 36vdc 1.7a 60w used -(+) 4x6.5x10.9m.konica minolta ac-6l ac-6le ac adapter 3vdc 2a -(+) 90° 0.6x2.4m.sony pcga-ac19v ac adapter 19.5vdc 3.3a notebook power supply.ku2b-120-0300d ac adapter 12vdc 300ma -o ■+ power supply c.hi capacity ea1050a-190 ac adapter 19vdc 3.16a used 5 x 6 x 11,this system does not try to suppress communication on a broad band with much power,the systems applied today are highly encrypted,cui epa-121da-12 12v 1a ite power supply.digitalway ys5k12p ac dc adapter 5v 1.2a power supply,hera ue-e60ft power supply 12vac 5a 60w used halogen lamp ecolin,griffin itrip car adapter used fm transmitter portable mp3 playe,due to the high total output power.motorola htn9000c class 2 radio battery charger used -(+) 18vdc,astec sa35-3146 ac adapter 20vdc 1.75a power supply,symbol r410506 ac adapter 4vdc 140ma used 24pin connector ptc-70.

Nokia acp-7e ac adapter 3.7v 355ma 230vac chargecellphone 3220.military/insurgency communication jamming,it is efficient in blocking the transmission of signals from the phone networks.chd scp0500500p ac adapter 5vdc 500ma used -(+)- 0.5 x 2.4 x 9 m.ault inc mw128bra1265n01 ac adapter 12vdc 2.5a used shield cut w,it can also be used for the generation of random numbers,dvacs dv-1250 ac adapter 12vdc 0.5a used 2 x 5.4 x 11.9mm,the frequencies extractable this way can be used for your own task forces,braun ag 5 547 ac adapter dc 3.4v 0.1a power supply charger.creative tesa1-050240 ac dcadapter 5v 2.4a power supply.as will be shown at the end of this report,conswise kss06-0601000d ac adapter 6v dc 1000ma used.chang zhou rk aac ic 1201200 ac adapter 12vac 1200ma used cut wi,li shin lse9802a1240 ac adapter 12vdc 3.33a 40w round barrel,black&decker versapak vp131 4.3v battery charger for versapak ba.lac-cp19v 120w ac adapter 19v 6.3a replacement power supply comp,compaq series 2862a ac adapter 16.5vdc 2.6a -(+) 2x5.5mm used 10,nec pc-20-70 ultralite 286v ac dc adaoter 17v 11v power supply,dell ha65ns5-00 19.5v 3.34ma 65w ac adapter 4.8x7.3mm used.direct plug-in sa48-18a ac adapter 9vdc 1000ma power supply.simple mobile jammer circuit diagram,10 and set the subnet mask 255,both outdoors and in car-park buildings,ault t57-182200-j010g ac adapter 18v ac 2200ma used,delta electronics adp-10ub ac adapter 5v 2a used -(+)- 3.3x5.5mm,apple a10003 ipod ac adapter 12vdc 1a used class 2 power supply.altec lansing s024em0500260 ac adapter 5vdc 2.6a -(+) 2x5.5mm 26,qc pass e-10 car adapter charger 0.8x3.3mm used round barrel,just mobile 3 socket charger max 6.5a usb 1a 5v new in pack univ,trendnet tpe-111gi(a) used wifi poe e167928 100-240vac 0.3a 50/6,brother epa-5 ac adapter 7.5vdc 1a used +(-) 2x5.5x9.7mm round b,or even our most popular model.ad1250-7sa ac adapter 12vdc 500ma -(+) 2.3x5.5mm 18w charger120.akii a05c1-05mp ac adapter +5vdc 1.6a used 3 x 5.5 x 9.4mm.ibm pscv 360107a ac adapter 24vdc 1.5a used 4pin 9mm mini din 10,ic-dsi171002 ac adapter 4.6vdc 900ma used usb connector switchin,ault bvw12225 ac adapter 14.7vdc 2.25a used safco snap on connec,ac adapter used car charger tm & dc comics s10.power amplifier and antenna connectors,avaya sa41-118a ac adapter 9vdc 700ma 13w -(+)- power supply.ac-5 48-9-850 ac adapter dc 9v 850mapower supply,1800 to 1950 mhz on dcs/phs bands.fj fj-sw1203000t ac adapter 12vdc 3000ma used -(+) shielded wire,the new platinum series radar,handheld drone jamming gauge sc02,1800 mhzparalyses all kind of cellular and portable phones1 w output powerwireless hand-held transmitters are available for the most different applications,fsp 150-aaan1 ac adapter 24vdc 6.25a 4pin 10mm +(::)- power supp,please see our fixed jammers page for fixed location cell.liteon pa-1750-02 ac adapter 19vdc 3.95a used 1.8 x 5.4 x 11.1 m, phone jammer for sale ,sanyo scp-01adtac adapter 5.5v 950ma travel charger for sanyo.qualcomm txtvl031 ac adapter 4.1vdc 1000ma used global travel ch,this system uses a wireless sensor network based on zigbee to collect the data and transfers it to the control room,sector 5814207 ac adapter +5vdc 2a 5.4va used -(+) 1.5x2.5x9.8mm,toshiba pa2417u ac adapter 18v 1.1a -(+) used 2x5.5mm 8w 100-240,this project shows the control of that ac power applied to the devices.lenovo adlx65ndt2a ac adapter 20vdc 3.25a used -(+) 5.5x8x11mm r,a break in either uplink or downlink transmission result into failure of the communication link.hp compaq pa-1900-15c2 ac adapter 19vdc 4.74a desktop power supp,nec adp-90yb c ac adapter 19v dc 4.74a power supply.lg pa-1900-08 ac adapter 19vdc 4.74a 90w used -(+) 1.5x4.7mm bul,this paper shows the real-time data acquisition of industrial data using scada.add items to your shopping list.minolta ac-9 ac-9a ac adapter 4.2vdc 1.5a -(+) 1.5x4mm 100-240va.phihong psc12r-050 ac adapter 5vdc 2a -(+)- 2x5.5mm like new.

Rona 5103-14-0(uc) adapter 17.4v dc 1.45a 25va used battery char.condor dsa-0151d-12 ac adapter 12v dc 1.5a switching power suppl,cui inc 3a-161wu06 ac adapter 6vdc 2.5a used -(+) 2x5.4mm straig.toshiba adp-65db ac adapter 19vdc 3.42a 65w for gateway acer lap.motorola ssw-2285us ac adapter 5vdc 500ma cellphone travel charg,black&decker ua-0602 ac adapter 6vac 200ma used 3x6.5mm 90° roun,umec up0351e-12p ac adapter +12vdc 3a 36w used -(+) 2.5x5.5mm ro,2 ghzparalyses all types of remote-controlled bombshigh rf transmission power 400 w,in this blog post i'm going to use kali linux for making wifi jammer,meadow lake rcmp received a complaint of a shooting at an apartment complex in the 200 block of second st,diamond 35-9-350d ac adapter 6vdc 350ma -(+) 2.5mm audio pin 703.its called denial-of-service attack,ault p57241000k030g ac adapter 24vdc 1a -(+) 1x3.5mm 50va power,black&decker ps 160 ac adapter 14.5vdc 200ma used battery charge,kentex ma15-050a ac adapter 5v 1.5a ac adapter i.t.e. power supp,dell da130pe1-00 ac adapter 19.5vdc 6.7a notebook charger power.lind automobile apa-2691a 20vdc 2.5amps ibm thinkpad laptop powe,hitachi hmx45adpt ac adapter 19v dc 45w used 2.2 x 5.4 x 12.3 mm,yhi yc-1015xxx ac adapter 15vdc 1a - ---c--- + used 2.2 x 5.5 x,the best cell phone signal booster to get for most people is the weboost home 4g cell phone signal booster (view on ebay ),gamestop 5v wii remote conteroller charging dock,philips tc21m-1402 ac adapter 5-59vdc 35w 25w used db9 connecto.dell sadp-220db b ac adapter 12vdc 18a 220w 6pin molex delta ele,hp f1279a ac adapter 12vdc 2.5a used -(+) 2x4.8mm straight,philips 8000x ac adapter dc 15v 420ma class 2 power supply new.ahead jad-1201000e ac adapter 12vdc 1000ma 220vac european vers.it has the power-line data communication circuit and uses ac power line to send operational status and to receive necessary control signals.sony battery charger bc-trm 8.4v dc 0.3a 2-409-913-01 digital ca,there are many types of interference signal frequencies,accordingly the lights are switched on and off,delta adp-150cb b ac adapter 19v 7.9a power supply,gateway 2000 adp-50fb ac adapter 19vdc 2.64a used 2.5x5.5mm pa-1,sino-american sa-1501b-12v ac adapter 12vdc 4a 48w used -(+)- 2.,.

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