Correlation Estimation from Compressed Images
Vijayaraghavan Thirumalai, Pascal Frossard

TL;DR
This paper presents a method for estimating correlation between compressed images directly in the compressed domain, enabling effective stereo and video image reconstruction without full image reconstruction.
Contribution
It introduces a linear operator-based approach for correlation estimation from compressed measurements, improving distributed image coding performance.
Findings
Estimates correlation accurately in compressed domain.
Outperforms independent reconstruction algorithms by 2-4 dB.
Maintains competitiveness with methods requiring full image reconstruction.
Abstract
This paper addresses the problem of correlation estimation in sets of compressed images. We consider a framework where images are represented under the form of linear measurements due to low complexity sensing or security requirements. We assume that the images are correlated through the displacement of visual objects due to motion or viewpoint change and the correlation is effectively represented by optical flow or motion field models. The correlation is estimated in the compressed domain by jointly processing the linear measurements. We first show that the correlated images can be efficiently related using a linear operator. Using this linear relationship we then describe the dependencies between images in the compressed domain. We further cast a regularized optimization problem where the correlation is estimated in order to satisfy both data consistency and motion smoothness…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Advanced Image Processing Techniques · Advanced Vision and Imaging
