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A novel object-oriented stereo matching on multi-scale superpixels for low-resolution depth mapping

机译:用于低分辨率深度映射的多尺度超像素上新颖的面向对象的立体匹配

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This paper presents a novel object-oriented stereo matching on multi-scale superpixels to generate a low-resolution depth map. It overcomes the classic downsampling methods' disadvantages, such as boundary blurring, outlier enlargement and foreground objects merging to background, etc. The approach we exploited is to segment the image in three scales' superpixels from dense to sparse ones according to downsampling scale first, then compute disparity directly on superpixel's stereo matching. The post-processing of region constraint and local refinement uses hierarchical multi-scale superpixels as well. The proposed approach is validated on Middle-bury test-bed, and the experimental results outperform the current state-of-the-art stereo matching methods in low resolutions.
机译:本文提出了一种新颖的面向对象的立体匹配,可以在多尺度超像素上生成低分辨率深度图。它克服了传统的下采样方法的缺点,例如边界模糊,离群值放大和前景对象合并到背景等方面。我们采用的方法是先根据下采样比例将图像从密集到稀疏分成三个比例的超像素,然后直接根据超像素的立体匹配计算差异。区域约束和局部细化的后处理也使用分层的多尺度超像素。该方法在Middle-bury试验台上得到了验证,实验结果在低分辨率下优于当前最新的立体声匹配方法。

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