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Statistical Shape Model of Legendre Moments with Active Contour Evolution for Shape Detection and Segmentation

机译:具有主动轮廓演化的勒让德矩统计形状模型用于形状检测和分割

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This paper describes a novel method for shape detection and image segmentation. The proposed method combines statistical shape models and active contours implemented in a level set framework. The shape detection is achieved by minimizing the Gibbs energy of the posterior probability function. The statistical shape model is built as a result of a learning process based on nonparametric probability estimation in a PCA reduced feature space formed by the Legendre moments of training silhouette images. The proposed energy is minimized by it-eratively evolving an implicit active contour in the image space and subsequent constrained optimization of the evolved shape in the reduced shape feature space. Experimental results are also presented to show that the proposed method has very robust performances for images with a large amount of noise.
机译:本文介绍了一种新的形状检测和图像分割方法。所提出的方法结合了在水平集框架中实现的统计形状模型和活动轮廓。通过最小化后验概率函数的吉布斯能量来实现形状检测。统计形状模型是基于基于训练轮廓图像的Legendre矩形成的PCA缩减特征空间中非参数概率估计的学习过程的结果而建立的。通过迭代地在图像空间中演化出隐式活动轮廓,并在缩小的形状特征空间中对演化后的形状进行约束优化,从而将拟议的能量最小化。实验结果还表明,该方法对噪声较大的图像具有非常强的鲁棒性。

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