使用 PointNet 架构对 3D 鞋印进行分类:耐克和阿迪达斯大底二元分类的概念验证研究。

IF 1.5 4区 医学 Q2 MEDICINE, LEGAL
Ramazan Oğuz, Hakkı Halil Babacan, Faruk Aşıcıoğlu, Hüseyin Üvet
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引用次数: 0

摘要

鞋印是犯罪现场最常见的证据类型之一,仅次于指纹。然而,在这一领域,利用机器学习和深度学习等现代方法检测和分析鞋印的研究相当有限。随着技术的进步,最近在检测二维鞋印方面取得了积极成果。然而,很少有研究关注三维鞋印。本研究旨在利用深度学习方法,特别是 PointNet 架构,对两种不同品牌的三维鞋印进行二进制分类。本研究采用了从 160 双鞋中创建的 3D 数据集。该数据集包括来自阿迪达斯品牌的 797 幅图像和来自耐克品牌的 2445 幅图像。研究中使用的数据集包括穿过的鞋印。结果显示,训练阶段的准确率达到 96%,验证阶段的准确率达到 93%。这些研究结果是非常积极的,表明了对三维鞋印进行分类的巨大潜力。据介绍,这项研究是首次使用深度学习方法专门针对 3D 鞋印进行的分类研究。它证明了可以在三维鞋印上进行深度学习研究的概念。虽然对这些三维鞋印进行的二元分类可能无法完全满足当前的法医需求,但它将成为未来研究和创建用于法医目的的三维数据集的动力来源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Classification of 3D shoe prints using the PointNet architecture: proof of concept investigation of binary classification of nike and adidas outsoles.

Classification of 3D shoe prints using the PointNet architecture: proof of concept investigation of binary classification of nike and adidas outsoles.

Shoe prints are one of the most common types of evidence found at crime scenes, second only to fingerprints. However, studies involving modern approaches such as machine learning and deep learning for the detection and analysis of shoe prints are quite limited in this field. With advancements in technology, positive results have recently emerged for the detection of 2D shoe prints. However, few studies focusing on 3D shoe prints. This study aims to use deep learning methods, specifically the PointNet architecture, for binary classification applications of 3D shoe prints, utilizing two different shoe brands. A 3D dataset created from 160 pairs of shoes was employed for this research. This dataset comprises 797 images from the Adidas brand and 2445 images from the Nike brand. The dataset used in the study includes worn shoe prints. According to the results obtained, the training phase achieved an accuracy of 96%, and the validation phase achieved an accuracy of 93%. These study results are highly positive and indicate promising potential for classifying 3D shoe prints. This study is described as the first classification study conducted using a deep learning method specifically on 3D shoe prints. It provides proof of concept that deep learning research can be conducted on 3D shoeprints. While the developed binary classification of these 3D shoeprints may not fully meet current forensic needs, it will serve as a source of motivation for future research and for the creation of 3D datasets intended for forensic purposes.

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来源期刊
Forensic Science, Medicine and Pathology
Forensic Science, Medicine and Pathology MEDICINE, LEGAL-PATHOLOGY
CiteScore
3.90
自引率
5.60%
发文量
114
审稿时长
6-12 weeks
期刊介绍: Forensic Science, Medicine and Pathology encompasses all aspects of modern day forensics, equally applying to children or adults, either living or the deceased. This includes forensic science, medicine, nursing, and pathology, as well as toxicology, human identification, mass disasters/mass war graves, profiling, imaging, policing, wound assessment, sexual assault, anthropology, archeology, forensic search, entomology, botany, biology, veterinary pathology, and DNA. Forensic Science, Medicine, and Pathology presents a balance of forensic research and reviews from around the world to reflect modern advances through peer-reviewed papers, short communications, meeting proceedings and case reports.
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