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首页> 外文期刊>Applied Soft Computing >Rough membership function based illumination classifier for illumination invariant face recognition
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Rough membership function based illumination classifier for illumination invariant face recognition

机译:基于粗糙隶属度函数的光照分类器用于光照不变人脸识别

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摘要

This paper proposes a face recognition system to overcome the problem due to illumination variation. The propose system first classifies the image's illumination into dark, normal or shadow and then based on the illumination type; an appropriate technique is applied for illumination normalization. Propose system ensures that there is no loss of features from the image due to a proper selection of illumination normalization technique for illumination compensation. Moreover, it also saves the processing time for illumination normalization process when an image is classified as normal. This makes the approach computationally efficient. Rough Set Theory is used to build rmf illumination classifier for illumination classification. The results obtained as high as 96% in terms of accuracy of correct classification of images as dark, normal or shadow.
机译:本文提出了一种人脸识别系统来克服由于光照变化引起的问题。提议的系统首先将图像的照明分为暗,正常或阴影,然后根据照明类型进行分类。将适当的技术应用于照度归一化。提议的系统可确保由于适当选择了用于照明补偿的照明归一化技术而不会造成图像特征损失。此外,当图像被分类为正常时,还节省了照明归一化处理的处理时间。这使得该方法在计算上有效。粗糙集理论用于建立用于照明分类的rmf照明分类器。就将图像正确分类为暗,正常或阴影的准确性而言,获得的结果高达96%。

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