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A mutual information based face clustering algorithm for movie content analysis

机译:基于互信息的人脸聚类算法用于电影内容分析

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This paper investigates facial image clustering, primarily for movie video content analysis with respect to actor appearance. Our aim is to use novel formulation of the mutual information as a facial image similarity criterion and, by using spectral graph analysis, to cluster a similarity matrix containing the mutual information of facial images. To this end, we use the HSV color space of a facial image (more precisely, only the hue and saturation channels) in order to calculate the mutual information similarity matrix of a set of facial images. We make full use of the similarity matrix symmetries, so as to lower the computational complexity of the new mutual information calculation. We assign each row of this matrix as feature vector describing a facial image for producing a global similarity criterion for face clustering. In order to test our proposed method, we conducted two sets of experiments that have produced clustering accuracy of more than 80%. We also compared our algorithm with other clustering approaches, such as the k-means and fuzzy c-means (FCM) algorithms. Finally, in order to provide a baseline comparison for our approach, we compared the proposed global similarity measure with another one recently reported in the literature.
机译:本文研究了面部图像聚类,主要用于针对演员外观的电影视频内容分析。我们的目标是使用互信息的新颖表示法作为面部图像相似性标准,并通过使用频谱图分析,对包含面部图像互信息的相似性矩阵进行聚类。为此,我们使用面部图像的HSV色彩空间(更准确地说,仅是色相和饱和度通道)来计算一组面部图像的互信息相似度矩阵。我们充分利用相似矩阵的对称性,以降低新的互信息计算的计算复杂度。我们将此矩阵的每一行分配为描述面部图像的特征向量,以生成用于面部聚类的全局相似性标准。为了测试我们提出的方法,我们进行了两组实验,得出的聚类精度超过80%。我们还将我们的算法与其他聚类方法进行了比较,例如k均值和模糊c均值(FCM)算法。最后,为了为我们的方法提供基线比较,我们将提议的全局相似性度量与文献中最近报道的另一项进行了比较。

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