Mutual-Structure for Joint Filtering

作者:Xiaoyong Shen, Chao Zhou, Li Xu, Jiaya Jia

摘要

Previous joint/guided filters directly transfer structural information from the reference to the target image. In this paper, we analyze the major drawback—that is, there may be completely different edges in the two images. Simply considering all patterns could introduce significant errors. To address this issue, we propose the concept of mutual-structure, which refers to the structural information that is contained in both images and thus can be safely enhanced by joint filtering. We also use an untraditional objective function that can be efficiently optimized to yield mutual structure. Our method results in important edge preserving property, which greatly benefits depth completion, optical flow estimation, image enhancement, stereo matching, to name a few.

论文关键词:Image filter, Mutual structure, Joint estimation, Depth refinement, Stereo matching

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论文官网地址:https://doi.org/10.1007/s11263-017-1021-y