Visually Weighted Compressive Sensing: Measurement and Reconstruction (original) (raw)

IEEE Transactions on Image Processing, 2000

Abstract

Compressive sensing (CS) makes it possible to more naturally create compact representations of data with respect to a desired data rate. Through wavelet decomposition, smooth and piecewise smooth signals can be represented as sparse and compressible coefficients. These coefficients can then be effectively compressed via the CS. Since a wavelet transform divides image information into layered blockwise wavelet coefficients over spatial and frequency domains, visual improvement can be attained by an appropriate perceptually weighted CS scheme. We introduce such a method in this paper and compare it with the conventional CS. The resulting visual CS model is shown to deliver improved visual reconstructions.

Alan Bovik hasn't uploaded this paper.

Let Alan know you want this paper to be uploaded.

Ask for this paper to be uploaded.