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Robust rigid coherent point drift algorithm based on outlier suppression and its application in image matching

机译:基于离群点抑制的鲁棒刚性相干点漂移算法及其在图像匹配中的应用

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The typical probability based point pattern matching method is coherent point drift (CPD) algorithm, which treats one point set as centroids of a Gaussian mixture model, and then fits it to the other. It uses the expectation maximization framework, where the point correspondences and transformation parameters are updated alternately. However, the anti-outlier performance of CPD is not robust enough as outliers have always been involved in the operation until the CPD converges. Hence, an automatic outlier suppression (AOS) mechanism is proposed. First, outliers are judged by a matching probability matrix. Then, transformation parameters are fitted using accurate matching point sets. Finally, the Gaussian centroids are forced to move coherently by this transformation model. AOS-CPD can efficiently improve the anti-outlier performance of rigid CPD. Furthermore, CPD is applied to image matching. A new local changing information descriptor-relative phase histogram (RPH) is designed and RPH-AOSCPD is proposed to embed RPH measurement into AOS-CPD as a constraint condition. RPH-AOS-CPD makes full use of grayscale information besides having an excellent anti-outlier performance. The experimental results based on both synthetic and real data indicate that compared with other algorithms, AOS-CPD is more robust to outliers and RPH-AOS-CPD offers a good practicability and accuracy in image matching applications. (C) 2015 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:基于概率的典型点模式匹配方法是相干点漂移(CPD)算法,该算法将一个点集视为高斯混合模型的质心,然后将其拟合到另一个。它使用期望最大化框架,在该框架中,点对应关系和变换参数交替更新。但是,CPD的抗离群性能不够鲁棒,因为离群值一直涉及到操作,直到CPD收敛为止。因此,提出了一种自动离群值抑制(AOS)机制。首先,通过匹配概率矩阵来判断离群值。然后,使用精确的匹配点集拟合变换参数。最后,该变换模型迫使高斯质心一致地运动。 AOS-CPD可以有效提高刚性CPD的抗离群性能。此外,CPD被应用于图像匹配。设计了一种新的局部变化信息描述符相对相位直方图(RPH),并提出了RPH-AOSCPD,将RPH测量值作为约束条件嵌入到AOS-CPD中。 RPH-AOS-CPD除了具有出色的抗离群性能外,还充分利用了灰度信息。基于合成和真实数据的实验结果表明,与其他算法相比,AOS-CPD对异常值的鲁棒性更高,而RPH-AOS-CPD在图像匹配应用中具有良好的实用性和准确性。 (C)2015年光电仪器工程师协会(SPIE)

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