Title
Collaborative Target Classification for Image Recognition in Wireless Sensor Networks
Abstract
Target classification, especially visual target classification, in complex situations is challenging for image recognition in wireless sensor networks (WSNs). The distributed and online learning for target classification is significant for highly-constrained WSNs. This paper presents a collaborative target classification algorithm for image recognition in WSNs, taking advantages of the collaboration for the data mining between multi-sensor nodes. The proposed algorithm consists of three steps, target detection and feature extraction are based on single-sensor node processing, whereas target classification is implemented by collaboration between multi-sensor nodes using collaborative support vector machines (SVMs). For conquering the disadvantages of inevitable missing rate and false rate in target detection, the proposed collaborative SVM adopts a robust mechanism for adaptive sample selection, which improves the incremental learning of SVM by just fusing the information from a selected set of wireless sensor nodes. Furthermore, a progressive distributed framework for collaborative SVM is also introduced for enhancing the collaboration between multi-sensor nodes. Experimental results demonstrate that the proposed collaborative target classification algorithm for image recognition can accomplish target classification quickly and accurately with little congestion, energy consumption and execution time.
Year
DOI
Venue
2007
10.1007/978-3-540-73871-8_19
ADMA
Keywords
Field
DocType
visual target classification,collaborative target classification,collaborative svm,multi-sensor node,proposed collaborative,image recognition,collaborative support vector machine,target classification,proposed collaborative target classification,target detection,wireless sensor networks,collaborative target classification algorithm,data mining,support vector machine,wireless sensor network,feature extraction
Data mining,Wireless,Computer science,Artificial intelligence,Online learning,Sensor node,Computer vision,Key distribution in wireless sensor networks,Support vector machine,Feature extraction,Wireless sensor network,Energy consumption,Machine learning
Conference
Volume
ISSN
Citations 
4632
0302-9743
0
PageRank 
References 
Authors
0.34
14
3
Name
Order
Citations
PageRank
Xue Wang127132.46
Sheng Wang21338.94
Junjie Ma314815.24