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枪械用过弹壳数据库中枪膛表面痕迹和撞针的图像匹配算法。

Image matching algorithms for breech face marks and firing pins in a database of spent cartridge cases of firearms.

作者信息

Geradts Z J, Bijhold J, Hermsen R, Murtagh F

机构信息

Department Digital Technology, Netherlands Forensic Institute of the Ministry of Justice, Volmerlaan 17, 2288 GD, Rijswijk, The Netherlands.

出版信息

Forensic Sci Int. 2001 Jun 1;119(1):97-106. doi: 10.1016/s0379-0738(00)00420-5.

Abstract

On the market several systems exist for collecting spent ammunition data for forensic investigation. These databases store images of cartridge cases and the marks on them. Image matching is used to create hit lists that show which marks on a cartridge case are most similar to another cartridge case. The research in this paper is focused on the different methods of feature selection and pattern recognition that can be used for optimizing the results of image matching. The images are acquired by side light images for the breech face marks and by ring light for the firing pin impression. For these images a standard way of digitizing the images used. For the side light images and ring light images this means that the user has to position the cartridge case in the same position according to a protocol. The positioning is important for the sidelight, since the image that is obtained of a striation mark depends heavily on the angle of incidence of the light. In practice, it appears that the user positions the cartridge case with +/-10 degrees accuracy. We tested our algorithms using 49 cartridge cases of 19 different firearms, where the examiner determined that they were shot with the same firearm. For testing, these images were mixed with a database consisting of approximately 4900 images that were available from the Drugfire database of different calibers.In cases where the registration and the light conditions among those matching pairs was good, a simple computation of the standard deviation of the subtracted gray levels, delivered the best-matched images. For images that were rotated and shifted, we have implemented a "brute force" way of registration. The images are translated and rotated until the minimum of the standard deviation of the difference is found. This method did not result in all relevant matches in the top position. This is caused by the effect that shadows and highlights are compared in intensity. Since the angle of incidence of the light will give a different intensity profile, this method is not optimal. For this reason a preprocessing of the images was required. It appeared that the third scale of the "à trous" wavelet transform gives the best results in combination with brute force. Matching the contents of the images is less sensitive to the variation of the lighting. The problem with the brute force method is however that the time for calculation for 49 cartridge cases to compare between them, takes over 1 month of computing time on a Pentium II-computer with 333MHz. For this reason a faster approach is implemented: correlation in log polar coordinates. This gave similar results as the brute force calculation, however it was computed in 24h for a complete database with 4900 images.A fast pre-selection method based on signatures is carried out that is based on the Kanade Lucas Tomasi (KLT) equation. The positions of the points computed with this method are compared. In this way, 11 of the 49 images were in the top position in combination with the third scale of the à trous equation. It depends however on the light conditions and the prominence of the marks if correct matches are found in the top ranked position. All images were retrieved in the top 5% of the database. This method takes only a few minutes for the complete database if, and can be optimized for comparison in seconds if the location of points are stored in files. For further improvement, it is useful to have the refinement in which the user selects the areas that are relevant on the cartridge case for their marks. This is necessary if this cartridge case is damaged and other marks that are not from the firearm appear on it.

摘要

市场上存在多种用于收集用于法医调查的用过弹药数据的系统。这些数据库存储弹壳及其上痕迹的图像。图像匹配用于创建命中列表,显示弹壳上哪些痕迹与另一个弹壳上的痕迹最相似。本文的研究重点是可用于优化图像匹配结果的不同特征选择和模式识别方法。通过侧光图像获取枪膛表面痕迹的图像,通过环形光获取撞针痕迹的图像。对于这些图像,使用了一种标准化的图像数字化方法。对于侧光图像和环形光图像,这意味着用户必须根据协议将弹壳放置在相同位置。定位对于侧光很重要,因为获得的条纹痕迹图像在很大程度上取决于光的入射角。在实践中,用户将弹壳定位的精度为±10度。我们使用来自19种不同枪支的49个弹壳测试了我们的算法,其中检查人员确定它们是用同一支枪射击的。为了进行测试,这些图像与一个数据库混合,该数据库由大约4900张不同口径的来自Drugfire数据库的图像组成。在那些匹配对之间的配准和光照条件良好的情况下,对相减后的灰度级进行简单计算就能得到最佳匹配图像。对于旋转和移位的图像,我们实现了一种“暴力”配准方法。图像被平移和旋转,直到找到差值标准差的最小值。这种方法并没有使所有相关匹配都处于首位。这是因为阴影和高光的强度被比较了。由于光的入射角会给出不同的强度分布,这种方法不是最优的。因此需要对图像进行预处理。结果表明,“à trous”小波变换的第三尺度与暴力方法相结合能给出最佳结果。图像内容的匹配对光照变化不太敏感。然而,暴力方法的问题是,在一台333MHz的奔腾II计算机上,比较49个弹壳之间的计算时间需要超过1个月。因此,实现了一种更快的方法:对数极坐标中的相关性。这给出了与暴力计算相似的结果,然而,对于一个包含4900张图像的完整数据库,它在24小时内就完成了计算。基于Kanade Lucas Tomasi(KLT)方程进行了一种基于特征的快速预选方法。比较用这种方法计算出的点的位置。通过这种方式,49张图像中的11张与“à trous”方程的第三尺度相结合处于首位。然而,是否能在排名靠前的位置找到正确匹配取决于光照条件和痕迹的明显程度。所有图像都在数据库的前5%中被检索到。如果将点的位置存储在文件中,对于完整数据库,这种方法只需要几分钟,并且可以在几秒钟内进行优化比较。为了进一步改进,进行细化是有用的,即用户选择弹壳上与他们的痕迹相关的区域。如果弹壳受损并且出现了不是来自枪支的其他痕迹,这是必要的。

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