Abstract:
Although many real-world signals are known to follow standard models, signals are usually first sampled, rather wastefully, at the Nyquist rate and only then parametrized...Show MoreMetadata
Abstract:
Although many real-world signals are known to follow standard models, signals are usually first sampled, rather wastefully, at the Nyquist rate and only then parametrized and compressed for efficient transport and analysis. Compressed sensing (CS) is a new technique that promises to directly produce a compressed version of a signal by projecting it to a lower dimensional but information preserving domain before the sampling process. Designing hardware to accomplish this projection, however, has remained problematic and while some hardware architectures do exist, they are either limited in signal model or scale poorly for low power implementations. In this paper, we design, implement and evaluate CapMux, a scalable hardware architecture for a compressed sensing analog front end. CapMux is low power and can handle arbitrary sparse and compressible signals, i.e. it is universal. The key idea behind CapMux's scalability is time multiplexed access to a single shared signal processing chain that projects the signal onto a set of pseudo-random sparse binary basis functions. We demonstrate the performance of a proof-of-concept 16-channel CapMux implementation for signals sparse in the time, frequency and wavelet domains. This circuit consumes 20μA on average while providing over 30dB SNR recovery in most instances.
Published in: 2012 International Green Computing Conference (IGCC)
Date of Conference: 04-08 June 2012
Date Added to IEEE Xplore: 04 October 2012
ISBN Information: