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Validating directional edge-based image feature representations in face recognition by spatial correlation-based clustering

机译:通过基于空间相关性的聚类验证面部识别中基于方向的基于边缘的图像特征表示

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Directional edge-based image feature representations have already been developed and applied to medical radiograph analysis, face detection, and face identification. The scheme of the feature-vector generation is considered as a dimensionality reduction from a high-dimension edge feature map space to a low-dimension edge histogram space. However, the validity of such schemes in dimensionality reduction has not yet been studied on the sound basis of statistics. In this paper, in order to validate the directional edge-based feature representations, the scheme of dimensionality reduction employing the hierarchical clustering based on the spatial correlations of edges has been investigated. In this study, the feature representations of images have been evaluated using facial images as the test vehicle. As a result, the validity of using the directional edge-based feature vectors in image recognition has been verified by the similarity between the results of the hierarchical clustering and the schemes employed in the feature representations.
机译:基于方向边缘的图像特征表示已被开发,并已应用于医学X射线照片分析,面部检测和面部识别。特征向量生成的方案被认为是从高维边缘特征图空间到低维边缘直方图空间的降维。然而,还没有基于可靠的统计研究这种方案在降维方面的有效性。为了验证基于方向的边缘特征表示,研究了基于边缘空间相关性的基于层次聚类的降维方案。在这项研究中,图像的特征表示已使用面部图像作为测试工具进行了评估。结果,已经通过分层聚类的结果与特征表示中采用的方案之间的相似性验证了在图像识别中使用基于方向边缘的特征向量的有效性。

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