Image segmentation with minimum mean cut

Song Wang, J. Siskind
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引用次数: 81

Abstract

We introduce a new graph-theoretic approach to image segmentation based on minimizing a novel class of 'mean cut' cost functions. Minimizing these cost functions corresponds to finding a cut with minimum mean edge weight in a connected planar graph. This approach has several advantages over prior approaches to image segmentation. First, it allows cuts with both open and closed boundaries. Second, it guarantees that the partitions are connected. Third, the cost function does not introduce an explicit bias, such as a preference for large-area foregrounds, smooth or short boundaries, or similar-weight partitions. This lack of bias allows it to produce segmentations that are better aligned with image edges, even in the presence of long thin regions. Finally, the global minimum of this cost function is largely insensitive to the precise choice of edge-weight function. In particular, we show that the global minimum is invariant under a linear transformation of the edge weights and thus insensitive to image contrast. Building on algorithms by Ahuja et al. (1993), we present a polynomial-time algorithm for finding a global minimum of the mean-cut cost function and illustrate the results of applying that algorithm to several synthetic and real images.
最小平均分割的图像分割
我们介绍了一种新的图论图像分割方法,该方法基于最小化一类新的“平均切割”代价函数。最小化这些代价函数对应于在连通的平面图中找到具有最小平均边权的切割。与之前的图像分割方法相比,这种方法有几个优点。首先,它允许开放和封闭边界的切割。其次,它保证分区是连接的。第三,成本函数没有引入明确的偏差,例如对大面积前景、平滑或短边界或相似权重分区的偏好。这种无偏置使得它能够产生更好地与图像边缘对齐的分割,即使在存在长而薄的区域时也是如此。最后,该代价函数的全局最小值对边权函数的精确选择不敏感。特别是,我们证明了全局最小值在边缘权重的线性变换下是不变的,因此对图像对比度不敏感。基于Ahuja等人(1993)的算法,我们提出了一种多项式时间算法,用于寻找平均切割成本函数的全局最小值,并说明了将该算法应用于几个合成和真实图像的结果。
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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