Quality based classification of images for illumination invariant face recognition

Bharath Subramanyam, Piyush Joshi, M. Meena, S. Prakash
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引用次数: 9

Abstract

Quality of an image plays a fundamental role in taking vital decisions. In various walks of life, one such decision is personal identification. Hence, it's assessment is essential prior to using it in many biometric applications such as face recognition, iris, fingerprint analysis etc. The proposed technique classifies images into four classes based on their illumination and contrast quality. Then, the proposed technique chooses the most suitable enhancement technique for particular class to get best possible image. The proposed technique has been experimented on the Yale B database and the results obtained are 97.14% accurate on an average in terms of the correct classification of images into the appropriate classes. In another experiment where 50 random images of 30 random subjects were selected and this process repeated over 10 times, the classifier was 99.17% accurate in classifying the images.
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光照不变人脸识别中基于质量的图像分类
在做出重要决定时,图像的质量起着至关重要的作用。在各行各业,一个这样的决定是个人身份。因此,在许多生物识别应用中,如面部识别、虹膜、指纹分析等,对其进行评估是必不可少的。该方法根据图像的照度和对比度质量将图像分为四类。然后,针对特定类别选择最合适的增强技术以获得最佳图像。在耶鲁大学B数据库上进行了实验,结果表明,将图像正确分类到适当的类别中,平均准确率为97.14%。在另一个实验中,随机选择30个随机受试者的50张随机图像,重复此过程10次以上,分类器对图像的分类准确率为99.17%。
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