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A robust illumination classifier using rough sets

机译:使用粗糙集的鲁棒照明分类器

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Variations in illumination still pose a major constraint in face recognition systems. Though many steps have been taken in this area, it continues to be a challenging field in this domain. We propose a framework to overcome this problem by first classifying the image into dark, normal or shadowed, and then selecting an appropriate filter for the image. This step ensures that there is no loss of features in the image due to a filter that is unsuitable for the image under consideration. Also processing time is saved when normal images that do not need any filtering are skipped. The filter pre-processes the image before it can be used for any further steps such as feature extraction and matching. The illumination-classification framework is modelled on Rough Set Theory and classifies the images according to their Rough Membership Functions. The results obtained are as high as 94.28% in terms of accuracy of correct classification of images into dark, normal or shadowed. It is shown that filtering an image with an appropriate filter yields more fiducial points on a face, hence better feature extraction, and hence a stronger training system for face-matching.
机译:照明的变化仍然在面部识别系统中提出了一个主要限制。虽然在这方面采取了许多步骤,但在该领域继续成为一个具有挑战性的领域。我们提出了一个框架,通过首先将图像分类为暗,正常或遮蔽,然后为图像选择适当的过滤器来克服这个问题。该步骤确保由于未考虑图像的图像不适合的滤波器,图像中没有丢失图像中的特征。当跳过不需要任何过滤的正常图像时,还会保存处理时间。滤波器在其之前预处理图像可以用于任何进一步的步骤,例如特征提取和匹配。照明分类框架在粗糙集理论上进行建模,并根据其粗略的成员资格函数对图像进行分类。在将图像的正确分类为黑暗,正常或阴影的准确性方面,所获得的结果高达94.28%。结果表明,用合适的滤波器滤波图像在面上产生更多的基准点,因此更好的特征提取,因此更强大的面部匹配训练系统。

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