分割与颜色聚类的联合优化

E. Lobacheva, O. Veksler, Yuri Boykov
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引用次数: 8

摘要

二值能量优化是将彩色图像分割为前景/背景区域的常用方法。为了对区域的外观进行建模,应该有效地处理颜色这一相对高维的特征。全彩色直方图通常过于稀疏而不可靠。一种方法是通过聚类或量化颜色空间来显式地降低维数。另一种流行的方法是为色彩空间的软隐式聚类拟合gmm。当前景/背景足够明显时,这些方法效果很好。在更细微的外观差异的情况下,这两种方法都可以减少甚至消除前景/背景的区别。这是因为颜色聚类完全独立于分割过程,作为预处理步骤(在聚类中),或者独立于前景和独立于背景(在GMM中)。我们提出通过在能量函数中加入新的聚类项,使聚类成为分割的一个组成部分。我们带有聚类术语的能量函数有利于使前景/背景外观更加明显的聚类。因此,我们的能量函数在颜色聚类、前景/背景模型和分割上共同优化。精确的优化是不可行的,因此我们开发了一个近似算法。我们展示了在迷彩图像和标准分割数据集上将颜色聚类项纳入能量函数的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joint Optimization of Segmentation and Color Clustering
Binary energy optimization is a popular approach for segmenting a color image into foreground/background regions. To model the appearance of the regions, color, a relatively high dimensional feature, should be handled effectively. A full color histogram is usually too sparse to be reliable. One approach is to explicitly reduce dimensionality by clustering or quantizing the color space. Another popular approach is to fit GMMs for soft implicit clustering of the color space. These approaches work well when the foreground/background are sufficiently distinct. In cases of more subtle difference in appearance, both approaches may reduce or even eliminate foreground/background distinction. This happens because either color clustering is performed completely independently from the segmentation process, as a preprocessing step (in clustering), or independently for the foreground and independently for the background (in GMM). We propose to make clustering an integral part of segmentation, by including a new clustering term in the energy function. Our energy function with a clustering term favours clusterings that make foreground/background appearance more distinct. Thus our energy function jointly optimizes over color clustering, foreground/background models, and segmentation. Exact optimization is not feasible, therefore we develop an approximate algorithm. We show the advantage of including the color clustering term into the energy function on camouflage images, as well as standard segmentation datasets.
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