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Illumination normalization using fuzzy filter in DCT domain for face recognition

机译:DCT域中使用模糊滤波器的人脸识别照明归一化

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摘要

We develop a new approach of illumination normalization for face recognition under varying lighting conditions. The effect of illumination variations is in decreasing order over low-frequency discrete cosine transform (DCT) coefficients. The proposed approach is expected to nullify the effect of illumination variations as well as to preserve the low-frequency details of a face image in order to achieve a good recognition performance. This has been accomplished by using a fuzzy filter applied over the low-frequency DCT (LFDCT) coefficients. The 'simple classification technique' (k-nearest neighbor classification) is used to establish the performance improvement by present approach of illumination normalization under high and unpredictable illumination variations. Our fuzzy filter based illumination normalization approach achieves zero error rate on Yale face database B (named as Yale B database in this work) and CMU PIE database. An excellent performance is achieved on extended Yale B database. The present approach of illumination normalization is also tested on Yale face database which comprises of illumination variations together with expression variations and misalignment. Significant reduction in the error rate is achieved by the present approach on this database as well. These results establish the superiority of the proposed approach of illumination normalization, over the existing ones.
机译:我们开发了一种新的光照归一化方法,用于在变化的光照条件下进行人脸识别。在低频离散余弦变换(DCT)系数上,照明变化的影响按降序排列。预期所提出的方法将消除照明变化的影响,并保留面部图像的低频细节,以实现良好的识别性能。这是通过使用应用于低频DCT(LFDCT)系数的模糊滤波器来实现的。使用“简单分类技术”(k近邻分类)通过当前在高且不可预测的照明变化下的照明归一化方法来建立性能改进。我们基于模糊滤波器的照度归一化方法在耶鲁人脸数据库B(在本工作中称为耶鲁B数据库)和CMU PIE数据库上实现了零错误率。在扩展的Yale B数据库上实现了出色的性能。照明归一化的当前方法也在耶鲁人脸数据库上进行了测试,该数据库包括照明变化以及表情变化和未对准。通过该数据库上的当前方法,也大大降低了错误率。这些结果证明了所提出的照明归一化方法优于现有方法的优越性。

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