Improved stereo image matching using mutual information and hierarchical prior probabilities

C. Fookes, Bennamoun, A. Lamanna
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引用次数: 21

Abstract

Mutual information (MI) has shown promise as an effective stereo matching measure for images affected by radiometric distortion. This is due to the robustness of MI against changes in illumination. However MI-based approaches are particularly prone to the generation of false matches due to the small statistical power of the matching windows. The paper proposes extensions to MI-based stereo matching in order to increase the robustness of the algorithm. Firstly, prior probabilities are incorporated into the MI measure in order to considerably increase the statistical power of the matching windows. These prior probabilities, which are calculated from the global joint histogram between the stereo pair, are tuned to a two level hierarchical approach. A 2D match surface, in which the match score is computed for every possible combination of template and matching window, is also utilised. This enforces left-right consistency and uniqueness constraints. These additions to MI-based stereo matching significantly enhance the algorithm's ability to detect correct matches while decreasing computation time and improving the accuracy.
利用互信息和分层先验概率改进立体图像匹配
互信息(MI)作为一种有效的立体匹配方法,对受辐射畸变影响的图像有很大的应用前景。这是由于MI对光照变化的鲁棒性。然而,由于匹配窗口的统计能力较小,基于mi的方法特别容易产生错误匹配。为了提高算法的鲁棒性,本文对基于mi的立体匹配进行了扩展。首先,将先验概率纳入到MI测度中,以显著提高匹配窗口的统计能力。这些先验概率是从立体对之间的全局联合直方图计算出来的,被调整为两级分层方法。还使用了一个二维匹配曲面,其中计算了模板和匹配窗口的每种可能组合的匹配分数。这强制了左右一致性和唯一性约束。这些添加到基于mi的立体匹配中,显著增强了算法检测正确匹配的能力,同时减少了计算时间,提高了精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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