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A Kernel PCA Shape Prior and Edge Based MRF Image Segmentation

机译:基于核PCA形状先验和基于边缘的MRF图像分割

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摘要

We introduce both shape prior and edge information to Markov random field (MRF) to segment target of interest in images. Kernel Principal component analysis (PCA) is performed on a set of training shapes to obtain statistical shape representation. Edges are extracted directly from images. Both of them are added to the MRF energy function and the integrated energy function is minimized by graph cuts. An alignment procedure is presented to deal with variations between the target object and shape templates. Edge information makes the influence of inaccurate shape alignment not too severe, and brings result smoother. The experiments indicate that shape and edge play important roles for complete and robust foreground segmentation.
机译:我们将形状先验和边缘信息都引入了马尔可夫随机场(MRF),以分割图像中的目标。对一组训练形状执行内核主成分分析(PCA),以获得统计形状表示。边缘直接从图像中提取。两者都被添加到MRF能量函数中,并且通过图形切割将积分能量函数最小化。提出了一种对齐程序来处理目标对象和形状模板之间的差异。边缘信息使不正确的形状对齐的影响不太严重,并使结果更平滑。实验表明形状和边缘对于完整和鲁棒的前景分割起着重要的作用。

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