Computation of Coverage Backup Set for Wireless Video Sensor Network

Use of camera sensors has increased the scope of applications visualized by Wireless Sensor Networks (WSN). Video sensors increases the clarity of capture and reduces false alarm rate. Continuous capture and transmission of video streams can be highly energy consuming task given the resource constrained nature of sensor nodes. Also transmission of video stream demands high bandwidth. In applications like border patrolling, in event of intrusion, the system is expected to report the event. High deployment density of nodes results in larger overlap across the area covered by various nodes. Transmission of video streams by all video sensors detecting the intrusion can result in redundant streams, thus increasing energy consumption. Video sensors can vary their capture quality as a function of their backup nodes. Given the directional coverage of video sensor nodes, it becomes a challenging task to identify the set of backup nodes covering the same area. In this paper we investigate existing techniques for backup set computation and suggest a dynamic sized backup set computation method which is efficient and computes minimum sized backup set, minimizing the number of active nodes in the network.

[1]  Abdallah Makhoul,et al.  Dynamic scheduling of cover-sets in randomly deployed Wireless Video Sensor Networks for surveillance applications , 2009, 2009 2nd IFIP Wireless Days (WD).

[2]  Özgür B. Akan,et al.  Multimedia communication in wireless sensor networks , 2005, Ann. des Télécommunications.

[3]  Vijay Ukani,et al.  An Energy Efficient Routing Protocol for Wireless Multimedia Sensor Network , 2014, 2014 International Conference on Devices, Circuits and Communications (ICDCCom).

[4]  Eduardo Cerqueira,et al.  An OMNeT++ framework to evaluate video transmission in mobile wireless multimedia sensor networks , 2013, SimuTools.

[5]  Martin Reisslein,et al.  A survey of multimedia streaming in wireless sensor networks , 2008, IEEE Communications Surveys & Tutorials.

[6]  Congduc Pham Network lifetime and stealth time of wireless video sensor intrusion detection systems under risk-based scheduling , 2011, International Symposium on Wireless and Pervasive Computing.

[7]  Ousmane Thiare,et al.  Best cover set selection with multi-criteria approach in mission-critical surveillance for Wireless Image Sensor Networks , 2012, 2012 IFIP Wireless Days.

[8]  CongDuc Pham,et al.  Performance study of multiple cover-set strategies for mission-critical video surveillance with wireless video sensors , 2010, 2010 IEEE 6th International Conference on Wireless and Mobile Computing, Networking and Communications.

[9]  Deborah Estrin,et al.  Cyclops: in situ image sensing and interpretation in wireless sensor networks , 2005, SenSys '05.