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Salient feature point detection for image matching

机译:用于图像匹配的显着特征点检测

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摘要

A saliency based feature point detector is proposed, based on a decision-theoretic formulation of saliency. The saliency of an image region is defined to be the Kullback-Leibler (K-L) divergence between the conditional probability density function (pdf) for the matching regions and a background pdf. These pdfs are modeled by elliptically symmetric distributions (ESDs). We improve the ESD models by reducing the number of parameters without any significant degradation in the modeling of image regions. Experimental results from the Middlebury stereo dataset show that 1) the accuracy of estimates of saliency is increased and 2) fewer computations are required. It is also verified that the saliency of a region can be viewed as a measurement of how suitable the region is for image matching. In the Middlebury stereo dataset, salient regions are dense, and a promising matching rate is achieved.
机译:基于显着性的决策理论公式,提出了一种基于显着性的特征点检测器。图像区域的显着性定义为匹配区域的条件概率密度函数(pdf)与背景pdf之间的Kullback-Leibler(K-L)散度。这些pdf通过椭圆对称分布(ESD)建模。我们通过减少参数的数量来改进ESD模型,而不会在图像区域的建模中造成任何重大影响。 Middlebury立体数据集的实验结果表明:1)显着性估计的准确性提高了,并且2)所需的计算量减少了。还证实了区域的显着性可以看作是该区域适合图像匹配的度量。在Middlebury立体数据集中,显着区域密集,并且实现了有希望的匹配率。

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