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Whole Image and Modular Image Face Classification - What is Really Classified?

机译:整个图像和模块化图像的人脸分类-什么是真正的分类?

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Our aim is to explore the importance of chosen parts of frontal face images for person recognition. We have used logistic regression as the method of face image classification based on rough image classification, and on selected parts of an image divided into rectangular image blocks. Rough image means that no image processing transformation is performed before classification. Experiments on the images of 40 persons taken from the ORL face database show that a person classification based on collections of rough face images are effective, high accuracy rates are easy to obtain, but deeper analysis based on image partitioning suggests that the most important factor for correct classification are border parts of the face image. Furthermore, the experiments confirm the thesis that randomly generated projections do not degrade, or only slightly reduce the accuracy of classification, reducing the size of the vector of features in a significant way.
机译:我们的目的是探索正面面部图像的选定部分对于人识别的重要性。我们已经将逻辑回归作为基于粗糙图像分类以及将图像的选定部分划分为矩形图像块的面部图像分类方法。粗糙图像意味着在分类之前不执行图像处理转换。从ORL人脸数据库中获取的40个人的图像的实验表明,基于粗糙人脸图像集合的人分类是有效的,很容易获得较高的准确率,但是基于图像划分的更深入分析表明,最重要的因素是正确的分类是面部图像的边界部分。此外,实验证实了这样的论点,即随机生成的投影不会降级,或者只会稍微降低分类的准确性,从而显着减小特征向量的大小。

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