基于计算机视觉的人工智能枪响入口识别

IF 2.5 3区 医学 Q1 MEDICINE, LEGAL
Caio Henrique Pinke Rodrigues , Milena Dantas da Cruz Sousa , Michele Avila dos Santos , Percio Almeida Fistarol Filho , Jesus Antonio Velho , Aline Thais Bruni
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引用次数: 0

摘要

在世界各地的一些地方,使用枪支作为便利抢劫和杀人等犯罪的手段的情况有所增加。然而,认识到这类证据并不是一项微不足道的任务。因此,痕迹检验对于获取犯罪现场和犯罪动态的信息越来越重要。在这种情况下,本工作旨在利用基于计算机视觉的资源来识别白色棉质t恤上口径类型引起的不同条目。使用的算法是基于卷积神经网络的YOLOv11 (Ultralytics)。样本包括三种枪支的图像:a.38口径左轮手枪和9 毫米和。357口径手枪。这些是用徕卡DVM6数码显微镜获得的,共110张图像,分为53张9 mm口径的图像,29张。357口径,28口径。38口径。由于数量有限,使用了一种称为数据增强的方法,该方法在不向系统引入新信息的情况下增加了样本数量(总计436)。这些样本分为训练(336张)和验证(100张)。训练结果表明,该模型具有较好的预测鲁棒性和稳定性。模型质量参数均令人满意。对所有样本进行分类,并基于混淆矩阵构建3 × 3列联表,其分析表明参数平均值在90 %以上。与其他方法相比,计算机视觉应用于法医科学问题仍处于起步阶段。尽管如此,它仍在不断发展,可以用较少的主观解释程序提供补充信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gunshot entrance recognition by artificial intelligence using computer vision
The use of firearms as a means of facilitating crimes, such as robberies and homicides, has grown in several places around the world. However, recognizing this type of evidence is not a trivial task. Therefore, trace examinations are increasingly crucial to obtain information about a crime scene and criminal dynamics. Given this scenario, this work aimed to use resources based on computer vision to recognize different entries caused by caliber type on a white cotton T-shirt. The algorithm used was YOLOv11 (Ultralytics), based on convolutional neural networks. The samples comprised images of three firearms: a.38 caliber revolver and 9 mm and.357 caliber pistols. These were obtained with the Leica DVM6 digital microscope, totaling 110 images divided into 53 images of 9 mm caliber, 29 of.357 caliber, and 28 of.38 caliber. Due to the limited quantity, a methodology known as data augmentation was used, which increased the number of samples (totaling 436) without introducing new information into the system. These samples were divided into training (336 images) and validation (100 images). The training results indicate robustness for the prediction and stability of the model. The model quality parameters were all satisfactory. All samples were classified, and based on the confusion matrix, a 3 × 3 contingency table was constructed, and its analysis indicated parameters average above 90 %. Computer vision applied to forensic science problems is still in its infancy compared to other approaches. Still, it is growing and can provide complementary information with less subjective interpretation procedures.
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来源期刊
Forensic science international
Forensic science international 医学-医学:法
CiteScore
5.00
自引率
9.10%
发文量
285
审稿时长
49 days
期刊介绍: Forensic Science International is the flagship journal in the prestigious Forensic Science International family, publishing the most innovative, cutting-edge, and influential contributions across the forensic sciences. Fields include: forensic pathology and histochemistry, chemistry, biochemistry and toxicology, biology, serology, odontology, psychiatry, anthropology, digital forensics, the physical sciences, firearms, and document examination, as well as investigations of value to public health in its broadest sense, and the important marginal area where science and medicine interact with the law. The journal publishes: Case Reports Commentaries Letters to the Editor Original Research Papers (Regular Papers) Rapid Communications Review Articles Technical Notes.
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