A general rate-distortion optimization method for block compressed sensing of images

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Abstract

Block compressed sensing (BCS) is a promising technology for image sampling and compression for resource-constrained applications, but it needs to balance the sampling rate and quantization bit-depth for a bit-rate constraint. In this paper, we summarize the commonly used CS quantization frameworks into a unified framework, and a new bit-rate model and a model of the optimal bit-depth are proposed for the unified CS framework. The proposed bit-rate model reveals the relationship between the bit-rate, sampling rate, and bit-depth based on the information entropy of generalized Gaussian distribution. The optimal bit-depth model can predict the optimal bit-depth of CS measurements at a given bit-rate. Then, we propose a general algorithm for choosing sampling rate and bit-depth based on the proposed models. Experimental results show that the proposed algorithm achieves near-optimal rate-distortion performance for the uniform quantization framework and predictive quantization framework in BCS.

Original languageEnglish
Article number1354
JournalEntropy
Volume23
Issue number10
DOIs
Publication statusPublished - Oct 2021

Keywords

  • Bit-rate
  • Compressed sensing
  • Data acquisition
  • Optimal bit-depth
  • Quantization
  • Rate-distortion

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