A new method for human face recognition using texture and depth information

A. Assadi, A. Behrad
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引用次数: 14

Abstract

The efficiency of a human face recognition system depends on the capability of face recognition in presence of different changes in the appearance of face. One of the main difficulties regarding the face recognition systems is to recognize face in different views and poses. In this paper we propose a new algorithm which utilizes the combination of texture and depth information to overcome the problem of pose variation and illumination change for face recognition. In the proposed algorithm, we first use intensity image to extract efficient key features and find probable face matches in the face database using feature matching algorithm. We have defined some criteria to find the final match based on texture information or leave the decision to second stage. In the second stage the depth information are normalized and used for pose invariant face recognition. We tested the proposed algorithm using a face database with different poses and illumination and compared the results with those of other methods. We obtained the recognition rate of 88.96 percent which shows the considerable enhancement compared to previous methods.
一种基于纹理和深度信息的人脸识别新方法
人脸识别系统的效率取决于人脸在不同的变化情况下的识别能力。人脸识别系统的主要难点之一是如何识别不同视角和姿态下的人脸。本文提出了一种利用纹理和深度信息相结合的人脸识别算法,克服了人脸识别中姿态变化和光照变化的问题。该算法首先利用强度图像提取有效的关键特征,并利用特征匹配算法在人脸数据库中寻找可能匹配的人脸。我们已经定义了一些标准来根据纹理信息找到最终的匹配,或者把决定留给第二阶段。第二阶段对深度信息进行归一化处理,用于姿态不变人脸识别。我们使用不同姿态和光照的人脸数据库对该算法进行了测试,并与其他方法的结果进行了比较。我们的识别率达到了88.96%,与之前的方法相比有了很大的提高。
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