Encoding the \ell_p Ball from Limited Measurements
DCC '06 Proceedings of the Data Compression Conference
Quantization of Sparse Representations
DCC '07 Proceedings of the 2007 Data Compression Conference
Decoding by linear programming
IEEE Transactions on Information Theory
IEEE Transactions on Information Theory
Sensed compression with cosine and noiselet measurements for medical imaging
ITIB'12 Proceedings of the Third international conference on Information Technologies in Biomedicine
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Compressive Sensing (CS) is a new paradigm in signal acquisition and compression that has been attracting the interest of the signal compression community. When it comes to image compression applications, it is relevant to estimate the number of bits required to reach a specific image quality. Although several theoretical results regarding the rate-distortion performance of CS have been published recently, there are not many practical image compression results available. The main goal of this paper is to carry out an empirical analysis of the rate-distortion performance of CS in image compression. We analyze issues such as the minimization algorithm used and the transform employed, as well as the trade-off between number of measurements and quantization error. From the experimental results obtained we highlight the potential and limitations of CS when compared to traditional image compression methods.