压缩线性测量相关图像的联合重建

V. Thirumalai, P. Frossard
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引用次数: 1

摘要

本文提出了一种针对线性测量形式下的压缩相关图像的联合重构算法。我们首先提出了一种基于几何的模型来描述一对图像中视觉信息之间的相关性,这种相关性主要由物体的平移运动或视觉传感器驱动。我们考虑了一个特殊的问题,即选择一张图像作为参考图像,并将其用作压缩后的相关图像解码的边信息。这些压缩图像建立在随机测量的基础上,进一步量化和熵编码。联合解码器首先利用几何基函数捕获参考图像中最突出的视觉特征。由于图像是相关的,这些特征可能也会出现在压缩图像中,可能会进行一些小的转换。因此,压缩图像的重建是基于一个正则化优化问题,该问题估计压缩图像中的这些特征。正则化项进一步加强了重构图像与量化测量值之间的一致性。实验结果表明,该方法能够有效地估计图像之间的相关性。这进一步导致了良好的重建性能。从率失真的角度来看,该方案优于基于无监督视差或运动学习的DSC方案以及基于JPEG-2000的独立编码方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joint reconstruction of correlated images from compressed linear measurements
This paper proposes a joint reconstruction algorithm for compressed correlated images that are given under the form of linear measurements. We first propose a geometry based model in order to describe the correlation between visual information in a pair of images, which is mostly driven by the translational motion of objects or vision sensors. We consider the particular problem where one image is selected as the reference image and it is used as the side information for decoding the compressed correlated images. These compressed images are built on random measurements that are further quantized and entropy coded. The joint decoder first captures the most prominent visual features in the reference image using geometric basis functions. Since images are correlated, these features are likely to be present in the compressed images too, possibly with some small transformation. Hence, the reconstruction of the compressed image is based on a regularized optimization problem that estimates these features in the compressed images. The regularization term further enforces the consistency between the reconstructed images and the quantized measurements. Experimental results show that the proposed scheme is able to efficiently estimate the correlation between images. It further leads to good reconstruction performance. The proposed scheme is finally shown to outperform DSC schemes based on unsupervised disparity or motion learning as well as independent coding solution based on JPEG-2000 from a rate-distortion perspective.
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