Face identification using affine simulated dense local descriptors

Bong-Nam Kang, Daijin Kim
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引用次数: 7

Abstract

In this paper, we propose a method for pose and facial expression invariant face identification using the affine simulated local descriptors. Although the currently studied approaches present the higher recognition rate for face verification, the performance of face identification are still low. The proposed method consist of four step, we first normalize the face image using the face detector and eye detector. In second step, we apply the affine simulation for synthesizing various viewed face images. In third step, we make a descriptor on the overlapping block-based grid keypoints. In final step, a probe image is compared with the reference images in a gallery by calculating the number of nearest neighbor keypoints. To improve the recognition performance, we use also the keypoint distance ratio and false matched keypoint ratio. The proposed method using the affine simulated local descriptors showed the better performance than that of cosine similarity metric learning (CSML) method in terms of true acceptance rate, false rejection rate, false acceptance rate, and Rank-1 recognition rate.
基于仿射模拟密集局部描述符的人脸识别
本文提出了一种基于仿射模拟局部描述子的姿态和表情不变人脸识别方法。虽然目前研究的方法对人脸验证的识别率较高,但人脸识别的性能仍然较低。该方法分为四个步骤,首先利用人脸检测器和眼睛检测器对人脸图像进行归一化处理;第二步,我们将仿射仿真应用于各种观看的人脸图像的合成。第三步,在重叠的基于块的网格关键点上建立描述符。最后一步,通过计算最近邻关键点的个数,将探测图像与图库中的参考图像进行比较。为了提高识别性能,我们还使用了关键点距离比和错误匹配的关键点比。该方法在真接受率、假拒绝率、假接受率和Rank-1识别率方面均优于余弦相似度度量学习(CSML)方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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