基于颜色直方图的决策级融合嘴巴区域图像聚类

Fahimeh Salimi, M. Sadeghi
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引用次数: 5

摘要

众所周知,在许多情况下,组合不同的分类器可以提高分类系统的性能。本文提出了一种基于直方图的唇形分割方法,该方法考虑了不同光照不变颜色空间下的局部核直方图。直方图使用两个高斯核在局部区域计算;一个在色彩空间,另一个在空间域。使用估计的直方图,然后为每个像素计算与非唇类相关的后验概率。这个过程是在考虑不同的色彩空间时进行的。然后采用加权平均法对后验概率值进行融合。结果得到一个新的分数,用于将像素标记为唇或非唇。该方法的优点是分割过程完全无监督。因此,该方法对唇形、肤色、面部毛发、光照等不同的变化具有鲁棒性。此外,通过融合颜色信息来提高性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decision Level Fusion of Colour Histogram Based Classifiers for Clustering of Mouth Area Images
It is well known that in many situations combining diverse classifiers can improve the performance of a classification system. In this paper, a new histogram based lip segmentation technique is proposed considering local kernel histograms in different illumination invariant colour spaces. The histogram is computed in local areas using two Gaussian kernels; one in the colour space and the other in the spatial domain. Using the estimated histogram, the posterior probability associated to non-lip class is then computed for each pixel. This process is performed considering different colour spaces. A weighted averaging method is then used for fusing the posterior probability values. As the result a new score is obtained which is used for labeling the pixels as lip or non-lip. The advantage of the proposed method is that the segmentation process is totally unsupervised. So, the method is robust against different variations such as variation in lip shape, skin colour, facial hair, illumination, etc. Moreover, an improved performance is achieved by fusing colour information.
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