ACM Home Page
Please provide us with feedback. Feedback
An architecture for distributed wavelet analysis and processing in sensor networks
Full text PdfPdf (344 KB)
Source Information Processing In Sensor Networks archive
Proceedings of the 5th international conference on Information processing in sensor networks table of contents
Nashville, Tennessee, USA
POSTER SESSION: Main track table of contents
Pages: 243 - 250  
Year of Publication: 2006
ISBN:1-59593-334-4
Authors
Raymond S. Wagner  Rice University, Houston, Texas
Richard G. Baraniuk  Rice University, Houston, Texas
Shu Du  Rice University, Houston, Texas
David B. Johnson  Rice University, Houston, Texas
Albert Cohen  Universite Pierre et Marie Curie, Paris, France
Sponsor
ACM: Association for Computing Machinery
Publisher
ACM  New York, NY, USA
Bibliometrics
Downloads (6 Weeks): 8,   Downloads (12 Months): 74,   Citation Count: 3
Additional Information:

abstract   references   cited by   index terms   collaborative colleagues  

Tools and Actions: Review this Article  
Save this Article to a Binder    Display Formats: BibTex  EndNote ACM Ref   
DOI Bookmark: Use this link to bookmark this Article: http://doi.acm.org/10.1145/1127777.1127816
What is a DOI?

ABSTRACT

Distributed wavelet processing within sensor networks holds promise for reducing communication energy and wireless bandwidth usage at sensor nodes. Local collaboration among nodes de-correlates 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, de-noising, 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 naïve 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.


REFERENCES

Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.

 
1
J. Aćimovićc, R. Cristescu, and B. Beferull-Lozano. Efficient distributed multiresolution processing for data gathering in sensor networks. In Proc. IEEE Int. Conf. on Acoustic and Speech Sig. Proc. (ICASSP), pages 837--840, Mar. 2005.
 
2
S. Amat, F. Aràndiga, A. Cohen, R. Donat, G. Garcia, and M. von Oehsen. Data compression with ENO schemes: A case study. App. and Comp. Harmonic Analysis, 11:273--288, 2001.
3
 
4
A. Ciancio and A. Ortega. A distributed wavelet compression algorithm for wireless multihop sensor networks using lifting. In Proc. IEEE Int. Conf. on Acoustic and Speech Sig. Proc. (ICASSP), pages 825--828, Mar. 2005.
5
6
7
8
 
9
S. Servetto. Distributed signal processing algorithms for the sensor broadcast problem. In Proc. Conf. on Information Sciences and Systems (CISS), Mar. 2003.
 
10
J. M. Shapiro. Embedded image coding using zerotrees of wavelet coefficients. IEEE Transactions on Signal Processing, 41:3445--3462, Dec. 1993.
 
11
 
12
R. Wagner, H. Choi, R. Baraniuk, and V. Delouille. Distributed wavlet transform for irregular sensor network grids. In Proc. IEEE Stat. Sig. Proc. Workshop (SSP), Jul. 2005.


Collaborative Colleagues:
Raymond S. Wagner: colleagues
Richard G. Baraniuk: colleagues
Shu Du: colleagues
David B. Johnson: colleagues
Albert Cohen: colleagues