Composite Sketch Recognition Using Multi-scale Hog Features and Semantic Attributes

Xinying Xue, Jiayi Xu, Xiaoyang Mao
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引用次数: 6

Abstract

Composite sketch recognition belongs to heterogeneous face recognition research, which is of great important in the field of criminal investigation. Because composite face sketch and photo belong to different modalities, robust representation of face feature cross different modalities is the key to recognition. Considering that composite sketch lacks texture details in some area, using texture features only may result in low recognition accuracy, this paper proposes a composite sketch recognition algorithm based on multi-scale Hog features and semantic attributes. Firstly, the global Hog features of the face and the local Hog features of each face component are extracted to represent the contour and detail features. Then the global and detail features are fused according to their importance at score level. Finally, semantic attributes are employed to reorder the matching results. The proposed algorithm is validated on PRIP-VSGC database and UoM-SGFS database, and achieves rank 10 identification accuracy of 88.6% and 96.7% respectively, which demonstrates that the proposed method outperforms other state-of-the-art methods.
基于多尺度Hog特征和语义属性的组合素描识别
合成素描识别属于异构人脸识别研究,在刑侦领域具有重要意义。由于合成人脸草图和照片属于不同的模态,因此跨不同模态的人脸特征鲁棒表示是人脸识别的关键。针对复合草图在某些区域缺乏纹理细节,仅使用纹理特征可能导致识别精度较低的问题,提出了一种基于多尺度Hog特征和语义属性的复合草图识别算法。首先,提取人脸的全局Hog特征和各分量的局部Hog特征来表示人脸的轮廓和细节特征;然后根据全局特征和细节特征在评分水平上的重要程度进行融合。最后,利用语义属性对匹配结果进行重新排序。本文算法在rip - vsgc数据库和UoM-SGFS数据库上进行了验证,10级识别准确率分别达到88.6%和96.7%,优于其他先进方法。
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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