DocumentCode :
1367744
Title :
Low-Memory Wavelet Transforms for Wireless Sensor Networks: A Tutorial
Author :
Rein, Stephan ; Reisslein, Martin
Author_Institution :
Telecommun. Networks Group, Tech. Univ. Berlin, Berlin, Germany
Volume :
13
Issue :
2
fYear :
2011
Firstpage :
291
Lastpage :
307
Abstract :
The computational and memory resources of wireless sensor nodes are typically very limited, as the employed low-energy microcontrollers provide only hardware support for 16 bit integer operations and have very limited random access memory (RAM). These limitations prevent the application of modern signal processing techniques to pre-process the collected sensor data for energy and bandwidth efficient transmission over sensor networks. This tutorial introduces communication and networking generalists without a background in wavelet signal processing to low-memory wavelet transform techniques. We first explain the one-dimensional wavelet transform (including the lifting scheme for in-place computation), the two-dimensional wavelet transform, as well as the evaluation of wavelet transforms with fixed-point arithmetic. Then, we explain the fractional wavelet filter technique which computes wavelet transforms with 16 bit integers and requires less than 1.5 kByte of RAM for a 256 × 256 gray scale image. We present case studies illustrating the use of these low-memory wavelet techniques in conjunction with image coding systems to achieve image compression competitive to the JPEG2000 standard on resource-constrained wireless sensor nodes. We make the C-code software for the techniques introduced in this tutorial freely available.
Keywords :
Tutorials; data compression; filtering theory; image coding; image sensors; random-access storage; wavelet transforms; wireless sensor networks; C-code software; JPEG2000 standard; RAM; fixed-point arithmetic; fractional wavelet filter technique; gray scale image; image coding systems; image compression; low-energy microcontrollers; low-memory wavelet transforms; one-dimensional wavelet transform; random access memory; sensor data; two-dimensional wavelet transform; wavelet signal processing; wireless sensor network; word length 16 bit; Approximation methods; Image coding; Microcontrollers; Random access memory; Tutorials; Wavelet transforms; Image sensor; sensor network; wavelet transform;
fLanguage :
English
Journal_Title :
Communications Surveys & Tutorials, IEEE
Publisher :
ieee
ISSN :
1553-877X
Type :
jour
DOI :
10.1109/SURV.2011.100110.00059
Filename :
5618529
Link To Document :
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