用于法医调查的全、部分鞋印自动检索系统

Hsin-Chuan Chiu, Chung-Hao Chen, Wen-Chao Yang, Jiajun Jiang
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引用次数: 3

摘要

法医学鉴定方法可分为物理法医学、化学法医学和生物法医学三类。引入了强大的自动识别或检索系统,如AFIS和DNA-STR分析系统,用于指纹和生物证据。然而,鞋印证据仍然存在挑战。例如,大多数鉴定或检索方法只能应用于完整的鞋印,而不能对不同尺寸的鞋印进行比较。此外,真实犯罪现场的鞋印通常是不完整、嘈杂和不清晰的。本文提出了一种新的鞋印检索系统,该系统对鞋印尺寸进行标准化处理,能够有效地检索全印和部分印鞋印。实验结果表明,该方法能够在粉尘环境、部分脚印等多种情况下进行鞋印识别。特别是,我们提出的方法在处理不同鞋码时优于Ho的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Full and Partial Shoeprint Retrieval System for Use in Forensic Investigations
Forensic identification methods can be divided into physical forensics, chemical forensics, and biological forensics categories. Robust automatic identification or retrieval systems, such as AFIS and DNA-STR analysis systems, for fingerprints and biological evidence have been introduced. However, there are still challenges for shoeprint evidence. For example, most of identification or retrieval methods can only be applied to intact shoeprints, and do not compare shoeprints with different sizes. In addition, the shoeprints at a real crime scene are commonly incomplete, noisy, and unclear. In this paper, we propose a new shoeprint retrieval system that normalizes the size of shoeprints and is efficient in retrieving full- and partial-print shoeprints. Experimental results demonstrate our proposed method is capable of handling shoeprint identification in varied situations such as dusting environment, partial print, etc. In particular, our proposed method outperforms Ho's method when dealing with different shoe sizes.
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