Abstract

The recent sophistications in areas of mobile systems and sensor networks demand more and more processing resources. In order to maintain the system autonomy, energy saving is becoming one of the most difficult industrial challenges, in mobile computing. Most of efforts to achieve this goal are focused on improving the embedded systems design and the battery technology, but very few studies target to exploit the input signal time-varying nature. This paper aims to achieve power efficiency by intelligently adapting the processing activity to the input signal local characteristics. It is done by completely rethinking the processing chain, by adopting a non conventional sampling scheme and adaptive rate filtering. The proposed approach, based on the LCSS (Level Crossing Sampling Scheme) presents two filtering techniques, able to adapt their sampling rate and filter order by online analyzing the input signal variations. Indeed, the principle is to intelligently exploit the signal local characteristics--which is usually never considered--to filter only the relevant signal parts, by employing the relevant order filters. This idea leads towards a drastic gain in the computational efficiency and hence in the processing power when compared to the classical techniques.

Highlights

  • This work is part of a large project aimed to enhance the signal processing chain implemented in the mobile systems

  • Two novel adaptive rate filtering techniques have been devised. These are well suited for low activity sporadic signals like electrocardiogram, phonocardiogram and seismic signals

  • A reference filter is offline designed by taking into account the input signal statistical characteristics and the application requirements

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Summary

Introduction

This work is part of a large project aimed to enhance the signal processing chain implemented in the mobile systems. The power efficiency can be enhanced by intelligently adapting the system processing load according to the signal local variations In this end, a signal driven sampling scheme, which is based on “level-crossing” is employed. The Level Crossing Sampling Scheme (LCSS) [2] adapts the sampling rate by following the local characteristics of the input signal [3, 4] It drastically reduces the activity of the post-processing chain, because it only captures the relevant information [5, 6]. The idea is to pilot the system processing activity by the input signal variations By following this idea, an efficient solution is proposed by intelligently combining the features of both nonuniform and uniform signal processing tools, which promise a drastic computational gain of the proposed techniques compared to the classical one.

Nonuniform Signal Processing Tools
Proposed Adaptive Rate Filtering
Illustrative Example
Computational Complexity
Processing Error
Speech Signal as a Case Study
Findings
Conclusion
Full Text
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