An architecture for distributed wavelet analysis and processing in sensor networks

Distributed wavelet processing within sensor networks holds promise for reducing communication energy and wireless bandwidth usage at sensor nodes. Local collaboration among nodes decorrelates measurements, yielding a sparser data set with significant values at far fewer nodes. Sparsity can then be leveraged for subsequent processing such as measurement compression, denoising, and query routing. A number of factors complicate realizing such a transform in real-world deployments, including irregular spatial placement of nodes and a potentially prohibitive energy cost associated with calculating the transform in-network. In this paper, we address these concerns head-on; our contributions are fourfold. First, we propose a simple interpolatory wavelet transform for irregular sampling grids. Second, using ns-2 simulations of network traffic generated by the transform, we establish for a variety of network configurations break-even points in network size beyond which multiscale data processing provides energy savings. Distributed lossy compression of network measurements provides a representative application for this study. Third, we develop a new protocol for extracting approximations given only a vague notion of source statistics and analyze its energy savings over a more intuitive but naive approach. Finally, we extend the 2-dimensional (2-D) spatial irregular grid transform to a 3-D spatio-temporal transform, demonstrating the substantial gain of distributed 3-D compression over repeated 2-D compression

[1]  Baltasar Beferull-Lozano,et al.  Efficient distributed multiresolution processing for data gathering in sensor networks , 2005, Proceedings. (ICASSP '05). IEEE International Conference on Acoustics, Speech, and Signal Processing, 2005..

[2]  Deborah Estrin,et al.  Multiresolution storage and search in sensor networks , 2005, TOS.

[3]  David Evans,et al.  Localization for mobile sensor networks , 2004, MobiCom '04.

[4]  Antonio Ortega,et al.  A distributed wavelet compression algorithm for wireless multihop sensor networks using lifting , 2005, Proceedings. (ICASSP '05). IEEE International Conference on Acoustics, Speech, and Signal Processing, 2005..

[5]  Antonio Ortega,et al.  A distributed wavelet compression algorithm for wireless sensor networks using lifting , 2004, 2004 IEEE International Conference on Acoustics, Speech, and Signal Processing.

[6]  Deborah Estrin,et al.  Coping with irregular spatio-temporal sampling in sensor networks , 2004, CCRV.

[7]  David A. Maltz,et al.  A performance comparison of multi-hop wireless ad hoc network routing protocols , 1998, MobiCom '98.

[8]  Wim Sweldens,et al.  The lifting scheme: a construction of second generation wavelets , 1998 .

[9]  Hyeokho Choi,et al.  Distributed wavelet transform for irregular sensor network grids , 2005, IEEE/SP 13th Workshop on Statistical Signal Processing, 2005.

[10]  Sergio Amat,et al.  Data Compression with ENO Schemes: A Case Study☆☆☆ , 2001 .

[11]  S. Servetto Distributed Signal Processing Algorithms for the Sensor Broadcast Problem , 2003 .

[12]  Jie Gao,et al.  Fractionally cascaded information in a sensor network , 2004, Third International Symposium on Information Processing in Sensor Networks, 2004. IPSN 2004.

[13]  Jerome M. Shapiro,et al.  Embedded image coding using zerotrees of wavelet coefficients , 1993, IEEE Trans. Signal Process..