Deep Stereo Fusion: Combining Multiple Disparity Hypotheses with Deep-Learning

Matteo Poggi, S. Mattoccia
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引用次数: 27

Abstract

Stereo matching is a popular technique to infer depth from two or more images and wealth of methods have been proposed to deal with this problem. Despite these efforts, finding accurate stereo correspondences is still an open problem. The strengths and weaknesses of existing methods are often complementary and in this paper, motivated by recent trends in this field, we exploit this fact by proposing Deep Stereo Fusion, a Convolutional Neural Network capable of combining the output of multiple stereo algorithms in order to obtain more accurate result with respect to each input disparity map. Deep Stereo Fusion process a 3D features vector, encoding both spatial and cross-algorithm information, in order to select the best disparity hypothesis among those proposed by the single stereo matchers. To the best of our knowledge, our proposal is the first i) to leverage on deep learning and ii) able to predict the optimal disparity assignments by taking only as input cue the disparity maps. This second feature makes our method suitable for deployment even when other cues (e.g., confidence) are not available such as when dealing with disparity maps provided by off-the-shelf 3D sensors. We thoroughly evaluate our proposal on the KITTI stereo benchmark with respect state-of-the-art in this field.
深度立体融合:多视差假设与深度学习的结合
立体匹配是一种从两幅或多幅图像中推断深度的常用技术,已经提出了许多方法来处理这一问题。尽管有这些努力,找到精确的立体对应仍然是一个悬而未决的问题。现有方法的优点和缺点往往是互补的,在本文中,受该领域最新趋势的推动,我们通过提出深度立体融合来利用这一事实,深度立体融合是一种卷积神经网络,能够结合多种立体算法的输出,以便在每个输入视差图上获得更准确的结果。深度立体融合处理三维特征向量,同时编码空间信息和交叉算法信息,以便在单个立体匹配器提出的假设中选择最佳的视差假设。据我们所知,我们的建议是第一个i)利用深度学习和ii)能够通过仅将视差图作为输入来预测最佳视差分配。第二个特征使我们的方法适用于部署,即使在其他线索(例如,置信度)不可用时,例如处理由现成的3D传感器提供的视差图时。我们彻底评估了我们在KITTI立体基准上的建议,并尊重该领域的最新技术。
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