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Maximum likelihood stereo matching

机译:最大可能性立体声匹配

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摘要

In the research literature, maximum likelihood principles were applied to stereo matching by altering the stereo pair so that the difference would have a Gaussian distribution. In this paper we present a novel method of applying maximum likelihood to stereo matching. In our approach, we measure the real noise distribution from a training set, and then construct a new metric which we denote the maximum likelihood metric for comparing the stereo pair. The maximum likelihood metric is optimal in the sense that it maximizes the probability of similarity. In our experiments and discussion, we compared the maximum likelihood metric to other promising algorithms from the research literature using international stereo data sets. Furthermore, we showed that the algorithms from the research literature could be improved by using the maximum likelihood metric instead of the sum of squared differences.
机译:在研究文献中,通过改变立体对,将最大似然原理应用于立体声匹配,使得差异将具有高斯分布。在本文中,我们提出了一种对立体匹配的最大可能性施加最大可能性的新方法。在我们的方法中,我们测量来自训练集的真实噪声分布,然后构造一个新的指标,我们表示比较立体对对的最大似然度量。最大似然度量是最佳的,因为它最大化了相似度的概率。在我们的实验和讨论中,我们使用国际立体声数据集将最大可能性度量与其他有前途的算法进行比较。此外,我们认为可以通过使用最大似然度量而不是平方差的总和来改善来自研究文献的算法。

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