Region Separable Stereo Matching

计算机科学 卷积(计算机科学) 人工智能 匹配(统计) 卷积神经网络 模式识别(心理学) 特征提取 特征(语言学) 面子(社会学概念) 计算机视觉 人工神经网络 数学 统计 哲学 社会学 语言学 社会科学
作者
Junda Cheng,Xin Yang,Yuechuan Pu,Peng Guo
出处
期刊:IEEE Transactions on Multimedia [Institute of Electrical and Electronics Engineers]
卷期号:25: 4880-4893 被引量:10
标识
DOI:10.1109/tmm.2022.3183392
摘要

Convolutional neural networks (CNNs) have shown attractive performance for stereo matching. However, spatially shared convolution weights of CNN-based methods usually face a dilemma that the convolution weights suitable for aggregating contextual information in smooth regions often blur local matching details of textured regions and vice versa. This paper tries to find a way out of the dilemma via a novel region separable stereo matching (RSSM) method, which is universally applicable to CNN stereo models based on 4D cost volumes and can greatly improve the accuracy and efficiency of existing models. The key idea of our method is to automatically group image pixels into regions according to the gradients, and then construct and process the respective cost volume of each region separately. To perform cost aggregation, we propose a two-stage network consisted of regional grouping aggregation (RGA) and regional fusion aggregation (RFA). In RGA, convolutions are grouped in channel-wise, and each group of convolutions learn dedicated weights for the corresponding region via regional supervision. Through RGA, each group of convolutions can extract the most representative features from the corresponding region. In RFA, we combine matching clues of all convolution groups from RGA to output the final prediction map. We further extend the idea of regional grouping to feature extraction and modify the skip connection in aggregation networks to better adapt our method to stereo matching models. Experimental results on five public datasets show that our method can significantly improve several state-of-the-art 3D CNN based stereo models.

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