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Solving the stereo correspondence problem with false matches

机译:解决错误匹配的立体声对应问题

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摘要

The stereo correspondence problem exists because false matches between the images from multiple sensors camouflage the true (veridical) matches. True matches are correspondences between image points that have the same generative source; false matches are correspondences between similar image points that have different sources. This problem of selecting true matches among false ones must be overcome by both biological and artificial stereo systems in order for them to be useful depth sensors. The proposed re-examination of this fundamental issue shows that false matches form a symmetrical pattern in the array of all possible matches, with true matches forming the axis of symmetry. The patterning of false matches can therefore be used to locate true matches and derive the depth profile of the surface that gave rise to them. This reverses the traditional strategy, which treats false matches as noise. The new approach is particularly well-suited to extract the 3-D locations and shapes of camouflaged surfaces and to work in scenes characterized by high degrees of clutter. We demonstrate that the symmetry of false-match signals can be exploited to identify surfaces in random-dot stereograms. This strategy permits novel depth computations for target detection, localization, and identification by machine-vision systems, accounts for physiological and psychophysical findings that are otherwise puzzling and makes possible new ways for combining stereo and motion signals.
机译:存在立体对应问题是因为来自多个传感器的图像之间的错误匹配伪装了真实(垂直)匹配。真正匹配是指具有相同生成来源的图像点之间的对应关系;假匹配是指具有不同来源的相似图像点之间的对应关系。生物和人工立体声系统都必须克服在错误匹配中选择正确匹配的问题,以使它们成为有用的深度传感器。提议的对该基本问题的重新检查表明,错误匹配在所有可能匹配的数组中形成对称模式,而真实匹配则形成对称轴。因此,假匹配的图案可用于定位真匹配,并得出引起它们的表面的深度轮廓。这颠倒了将错误匹配视为噪音的传统策略。这种新方法特别适合提取伪装表面的3D位置和形状,并适用于以高度混乱为特征的场景。我们证明了错误匹配信号的对称性可以被用来识别随机点立体图中的表面。这种策略允许通过机器视觉系统进行新颖的深度计算,以进行目标检测,定位和识别,解决令人费解的生理和心理物理发现,并为组合立体声和运动信号提供了新的可能。

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