A Meta-Recognition Based Skin Marks Matching Algorithm with Feature Fusion for Forensic Identification

Peicong Yu, A. Kong
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引用次数: 1

Abstract

Soft biometrics, such as skin marks, play an important role in forensic identification, for they cannot only supplement hard biometrics to improve the overall identification performance, but may also serve as supportive evidence when hard biometrics is not available. Skin marks are small and difficult to be accurately detected due to different lighting conditions, poses as well as individual variation in their skin marks. In this paper, we propose a meta-recognition based skin marks matching algorithm to address these challenges for forensic identification. The algorithm combines both the geometric information in spatial distribution of skin marks and the appearance information of individual skin mark to establish the correspondence between two images. A multi-level skin marks matching scheme is adopted and fusion of scores is carried out at different levels using a meta-recognition method. The experimental results show that the new algorithm provides over 22% of improvement in terms of rank-1 accuracy over the previously proposed method.
基于元识别的特征融合皮肤标记匹配算法在法医鉴定中的应用
软生物特征,如皮肤痕迹,在法医鉴定中发挥着重要作用,因为它们不仅可以补充硬生物特征以提高整体鉴定性能,而且可以在硬生物特征不可用时作为辅助证据。由于光照条件的不同、姿势的不同以及皮肤印记的个体差异,皮肤印记很小,很难被准确检测到。在本文中,我们提出了一种基于元识别的皮肤标记匹配算法来解决法医鉴定中的这些挑战。该算法结合皮肤标记空间分布中的几何信息和单个皮肤标记的外观信息,建立两幅图像之间的对应关系。采用多层次皮肤标记匹配方案,采用元识别方法对不同层次的分数进行融合。实验结果表明,新算法在rank-1精度方面比之前提出的方法提高了22%以上。
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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