Face recognition using discrete cosine transform for global and local features

Aman Chadha, Pallavi P. Vaidya, M. Roja
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引用次数: 57

Abstract

Face Recognition using Discrete Cosine Transform (DCT) for Local and Global Features involves recognizing the corresponding face image from the database. The face image obtained from the user is cropped such that only the frontal face image is extracted, eliminating the background. The image is restricted to a size of 128 × 128 pixels. All images in the database are gray level images. DCT is applied to the entire image. This gives DCT coefficients, which are global features. Local features such as eyes, nose and mouth are also extracted and DCT is applied to these features. Depending upon the recognition rate obtained for each feature, they are given weightage and then combined. Both local and global features are used for comparison. By comparing the ranks for global and local features, the false acceptance rate for DCT can be minimized.
人脸识别采用离散余弦变换对全局和局部特征进行识别
利用离散余弦变换(DCT)对局部和全局特征进行人脸识别,包括从数据库中识别相应的人脸图像。从用户那里获得的人脸图像被裁剪,这样只提取正面人脸图像,消除背景。图像的大小限制为128 × 128像素。数据库中的所有图像都是灰度图像。DCT应用于整个图像。这给出了DCT系数,它是全局特征。提取局部特征,如眼睛、鼻子和嘴巴,并对这些特征进行DCT处理。根据对每个特征获得的识别率,它们被赋予权重,然后组合。局部特征和全局特征都用于比较。通过比较全局特征和局部特征的排名,可以将DCT的误接受率降到最低。
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