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UltraStereo: Efficient Learning-Based Matching for Active Stereo Systems

机译:UltraStereo:主动立体声系统的高效基于学习的匹配

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Efficient estimation of depth from pairs of stereo images is one of the core problems in computer vision. We efficiently solve the specialized problem of stereo matching under active illumination using a new learning-based algorithm. This type of active stereo i.e. stereo matching where scene texture is augmented by an active light projector is proving compelling for designing depth cameras, largely due to improved robustness when compared to time of flight or traditional structured light techniques. Our algorithm uses an unsupervised greedy optimization scheme that learns features that are discriminative for estimating correspondences in infrared images. The proposed method optimizes a series of sparse hyperplanes that are used at test time to remap all the image patches into a compact binary representation in O(1). The proposed algorithm is cast in a PatchMatch Stereo-like framework, producing depth maps at 500Hz. In contrast to standard structured light methods, our approach generalizes to different scenes, does not require tedious per camera calibration procedures and is not adversely affected by interference from overlapping sensors. Extensive evaluations show we surpass the quality and overcome the limitations of current depth sensing technologies.
机译:从立体图像对中有效估计深度是计算机视觉中的核心问题之一。我们使用一种新的基于学习的算法,有效地解决了主动照明下的立体声匹配的特殊问题。这种类型的有源立体声,即,通过有源投光器增强了场景纹理的立体声匹配,对于深度相机的设计非常引人注目,这主要是因为与飞行时间或传统结构光技术相比,鲁棒性得到了提高。我们的算法使用了一种无监督的贪婪优化方案,该方案可学习可用于估计红外图像中对应关系的特征。所提出的方法优化了一系列稀疏超平面,该稀疏超平面在测试时用于将所有图像块重新映射为O(1)中的紧凑二进制表示形式。所提出的算法在类似PatchMatch立体声的框架中进行转换,可产生500Hz的深度图。与标准结构光方法相比,我们的方法适用于不同的场景,不需要每台摄像机进行繁琐的校准程序,并且不受重叠传感器干扰的不利影响。广泛的评估表明,我们超越了质量,克服了当前深度感应技术的局限性。

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