Dammam Girls College of Science, P.O. Box 31113, Dammam, Saudi Arabia.
Forensic Sci Int. 2008 Oct 25;181(1-3):10-4. doi: 10.1016/j.forsciint.2008.07.004. Epub 2008 Sep 30.
Recent developments in forensic science have resulted in large numbers of scene of crime images being collected for recording and analysis. Shoeprint images are no exception. In fact, these have recently been of great interest to police and forensic scientists as footwear evidence is now treated in the same manner as fingerprint and DNA evidence. Traditional approaches to shoeprint representations attempt to classify shoeprint images based on a number of possible patterns. Such approaches are difficult to implement in an automatic fashion without the intervention of a forensic specialist. This paper presents a robust algorithm for shoeprint matching based on Hu's moment invariants. It is shown that decreasing the resolution of images does not have a significant effect on the performance of the algorithm. It is also shown that the optimal performance of the proposed system is attained for images rotated by any angle.
近年来,法医学领域的发展使得大量犯罪现场图像被收集用于记录和分析。鞋印图像也不例外。事实上,由于现在将鞋类证据视为与指纹和 DNA 证据相同的证据,因此这些图像最近引起了警方和法医学家的极大兴趣。传统的鞋印表示方法试图根据一些可能的模式对鞋印图像进行分类。如果没有法医学专家的干预,这种方法很难自动实现。本文提出了一种基于 Hu 矩不变量的稳健鞋印匹配算法。结果表明,降低图像分辨率对算法性能没有显著影响。还表明,所提出的系统的最佳性能是在图像以任意角度旋转时获得的。