Semi-dense stereo correspondence with dense features

O. Veksler
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引用次数: 7

Abstract

We present a new feature based algorithm for stereo correspondence. Most of the previous feature based methods match sparse features like edge pixels, producing only sparse disparity maps. Our algorithm detects and matches dense features between the left and right images of a stereo pair, producing a semi-dense disparity map. Our dense feature is defined with respect to both images of a stereo pair, and it is computed during the stereo matching process, not a preprocessing step. In essence, a dense feature is a connected set of pixels in the left image and a corresponding set of pixels in the right image such that the intensity edges on the boundary of these sets are stronger than their matching error (which is basically the difference in intensities between corresponding boundary pixels). Our algorithm produces accurate semi-dense disparity maps, leaving featureless regions in the scene unmatched. It is robust, requires little parameter tuning, can handle brightness differences between images, and is fast (linear complexity).
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具有密集特征的半密集立体对应
提出了一种新的基于特征的立体对应算法。以往基于特征的方法大多匹配边缘像素等稀疏特征,只能生成稀疏的视差图。我们的算法检测并匹配立体图像对左右图像之间的密集特征,产生半密集的视差图。我们的密集特征是针对一个立体对的两个图像定义的,它是在立体匹配过程中计算的,而不是预处理步骤。本质上,密集特征是左图像中的一组像素与右图像中相应的一组像素相连接,使得这些集合边界上的强度边缘强于它们的匹配误差(基本上是对应边界像素之间的强度差)。我们的算法生成精确的半密集视差图,在场景中留下没有特征的区域。它是鲁棒的,需要很少的参数调整,可以处理图像之间的亮度差异,并且是快速的(线性复杂性)。
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