Disparity-based Stereo Image Compression with Aligned Cross-View Priors

Yongqi Zhai, Luyang Tang, Y. Ma, Rui Peng, Rong Wang
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引用次数: 1

Abstract

With the wide application of stereo images in various fields, the research on stereo image compression (SIC) attracts extensive attention from academia and industry. The core of SIC is to fully explore the mutual information between the left and right images and reduce redundancy between views as much as possible. In this paper, we propose DispSIC, an end-to-end trainable deep neural network, in which we jointly train a stereo matching model to assist in the image compression task. Based on the stereo matching results (i.e. disparity), the right image can be easily warped to the left view, and only the residuals between the left and right views are encoded for the left image. A three-branch auto-encoder architecture is adopted in DispSIC, which encodes the right image, the disparity map and the residuals respectively. During training, the whole network can learn how to adaptively allocate bitrates to these three parts, achieving better rate-distortion performance at the cost of a lower disparity map bitrates. Moreover, we propose a conditional entropy model with aligned cross-view priors for SIC, which takes the warped latents of the right image as priors to improve the accuracy of the probability estimation for the left image. Experimental results demonstrate that our proposed method achieves superior performance compared to other existing SIC methods on the KITTI and InStereo2K datasets both quantitatively and qualitatively.
基于视差的交叉视先验对齐立体图像压缩
随着立体图像在各个领域的广泛应用,立体图像压缩(SIC)的研究受到了学术界和工业界的广泛关注。SIC的核心是充分挖掘左右图像之间的相互信息,尽可能减少视图之间的冗余。在本文中,我们提出了一种端到端可训练的深度神经网络dissic,在该网络中,我们共同训练一个立体匹配模型来辅助图像压缩任务。基于立体匹配结果(即视差),可以很容易地将右图像扭曲到左视图,并且仅对左视图和右视图之间的残差进行编码。dissic采用三支路自编码器结构,分别对右图像、视差图和残差进行编码。在训练过程中,整个网络可以学习如何自适应地将比特率分配给这三个部分,以较低的视差图比特率为代价获得更好的率失真性能。此外,我们提出了一种具有对齐交叉视图先验的条件熵模型,该模型将右侧图像的扭曲电位作为先验,以提高左侧图像的概率估计精度。实验结果表明,在KITTI和InStereo2K数据集上,我们的方法在定量和定性上都优于现有的SIC方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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