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Co-Teaching: an Ark to Unsupervised Stereo Matching

机译:共同教学:无人监督立体声匹配的方舟

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Stereo matching is a key component of autonomous driving perception. Recent unsupervised stereo matching approaches have received adequate attention due to their advantage of not requiring disparity ground truth. These approaches, however, perform poorly near occlusions. To overcome this drawback, in this paper, we propose CoT-Stereo, a novel unsupervised stereo matching approach. Specifically, we adopt a co-teaching framework where two networks interactively teach each other about the occlusions in an unsupervised fashion, which greatly improves the robustness of unsupervised stereo matching. Extensive experiments on the KITTI Stereo benchmarks demonstrate the superior performance of CoT-Stereo over all other state-of-the-art unsupervised stereo matching approaches in terms of both accuracy and speed. Our project webpage is https://sites.google.com/view/cot-stereo.
机译:立体声匹配是自主驾驶感知的关键组成部分。 由于他们的优势不需要差异地基真相,最近无监督的立体声匹配方法得到了充分的关注。 然而,这些方法靠近闭塞性差。 为了克服这篇文章,我们提出了一种小型无监督立体匹配方法的Cot-Stereo。 具体而言,我们采用共同教学框架,其中两个网络以无监督的方式互动地教导孤立,这大大提高了无监督立体匹配的鲁棒性。 关于基提立体声基准的广泛实验展示了COT-Stereo在所有其他最先进的无人监督的立体声匹配方法方面的卓越性能,即精度和速度。 我们的项目网页是https://sites.google.com/view/cot-stereo。

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