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AdaStereo: A Simple and Efficient Approach for Adaptive Stereo Matching

About

Recently, records on stereo matching benchmarks are constantly broken by end-to-end disparity networks. However, the domain adaptation ability of these deep models is quite poor. Addressing such problem, we present a novel domain-adaptive pipeline called AdaStereo that aims to align multi-level representations for deep stereo matching networks. Compared to previous methods for adaptive stereo matching, our AdaStereo realizes a more standard, complete and effective domain adaptation pipeline. Firstly, we propose a non-adversarial progressive color transfer algorithm for input image-level alignment. Secondly, we design an efficient parameter-free cost normalization layer for internal feature-level alignment. Lastly, a highly related auxiliary task, self-supervised occlusion-aware reconstruction is presented to narrow down the gaps in output space. Our AdaStereo models achieve state-of-the-art cross-domain performance on multiple stereo benchmarks, including KITTI, Middlebury, ETH3D, and DrivingStereo, even outperforming disparity networks finetuned with target-domain ground-truths.

Xiao Song, Guorun Yang, Xinge Zhu, Hui Zhou, Zhe Wang, Jianping Shi• 2020

Related benchmarks

TaskDatasetResultRank
Stereo MatchingKITTI 2015 (test)
D1 Error (Overall)3.08
233
Stereo MatchingMiddlebury (test)
EPE3.39
60
Stereo MatchingETH3D (test)--
34
Stereo MatchingMiddlebury 2014 (test)
Bad Pixel Rate (Thresh 2.0)13.7
11
Stereo MatchingETH3D low-res two-view stereo (test)
Bad Pixel Rate (1.0)3.09
10
Stereo MatchingETH3D two view
EPE (px)0.26
8
Stereo MatchingETH3D two-view stereo (test)
Error Rate (0.5px)10.22
6
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