一种人脸照片素描合成与识别的无监督方法

Heba Ghreeb M. Abdel-Aziz, H. M. Ebeid, M. Mostafa
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引用次数: 3

摘要

人脸识别被认为是生物识别技术在个人身份识别方面最重要的应用之一。人脸素描识别是人脸识别的一种特殊情况,在司法鉴定中具有重要的应用价值。本文提出了一种从单张照片合成伪素描的无监督人脸照片素描识别方法。该方法是第一个处理人脸素描识别的无监督方法。本文提出的照片草图合成步骤包括两个主要步骤,即边缘检测和毛发检测,分别应用于照片图像的灰度图像。在识别步骤中,将艺术家草图与生成的伪草图进行比较。采用PCA和LDA对速写图像进行特征提取。在分类步骤中使用具有欧氏距离的k近邻分类器。我们使用中文大学的数据库来测试该方法的性能。将合成的草图与最先进的方法,如局部线性嵌入(LLE)和特征变换进行了比较。实验结果表明,该方法生成了清晰的综合草图,并且比其他方法更准确地定义了人物。此外,在识别步骤中,该方法在1-最近邻居(rank1: first-match)上的识别率在PCA的82%到LDA的94%之间。在最近的5个邻居(排名5)处获得的最高识别率为98%,比一些最先进的方法要好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An unsupervised method for face photo-sketch synthesis and recognition
Face recognition is considered one of the most essential applications of Biometrics for personal identification. Face sketch recognition is a special case of face recognition, and it is very important for forensic applications. In this paper, we propose an unsupervised method for face photo-sketch recognition by synthesizing a pseudo-sketch from a single photo. The proposed method is the first unsupervised method that deals with face sketch recognition. The proposed photo-sketch synthesis step consists of two main steps, namely: edge detection and hair detection, which are applied on the grayscale image of the photo image. In the recognition step, the artist sketch is compared with the generated pseudo-sketch. PCA and LDA are used to extract features from the sketch images. The k-nearest neighbor classifier with Euclidean distance is used in the classification step. We use the CUHK database to test the performance of the proposed Method. Results for the synthesized sketches are compared with state-of-the-art methods, e.g., Local Linear Embedding (LLE) and Eigen transformation. The experimental results show that the proposed method generates a clear synthesis sketch and it defines persons more accurate than other methods. Moreover, in the recognition step, the proposed method achieves a recognition rate at the 1-nearest neighbor (rank1: first-match) range from 82% with PCA to 94% with LDA. The highest recognition rate is obtained at the 5-nearest neighbor (rank 5) is 98% that is better than some of the state-of-the-art methods.
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