Suppr超能文献

基于迁移学习的利用牙齿特征进行自动身份识别——对法医牙科学的一种辅助手段

Transfer Learning Based Automatic Human Identification using Dental Traits- An Aid to Forensic Odontology.

作者信息

B Sathya, R Neelaveni

机构信息

Department of Electrical and Electronics Engineering, PSG College of Technology, Coimbatore, Tamilnadu, 641 004, India.

出版信息

J Forensic Leg Med. 2020 Nov;76:102066. doi: 10.1016/j.jflm.2020.102066. Epub 2020 Sep 29.

Abstract

Forensic Odontology deals with identifying humans based on their dental traits because of their robust nature. Classical methods of human identification require more manual effort and are difficult to use for large number of Images. A Novel way of automating the process of human identification by using deep learning approaches is proposed in this paper. Transfer learning using AlexNet is applied in three stages: In the first stage, the features of the query tooth image are extracted and its location is identified as either in the upper or lower Jaw. In the second stage of transfer learning, the tooth is then classified into any of the four classes namely Molar, Premolar, Canine or Incisor. In the last stage, the classified tooth is then numbered according to the universal numbering system and finally the candidate identification is made by using distance as metrics. These three stage transfer learning approach proposed in this work helps in reducing the search space in the process of candidate matching. Also, instead of making the network classify all the 32 teeth into 32 different classes, this approach reduces the number of classes assigned to the classification layer in each stage thereby increasing the performance of the network. This work outperforms the classical approaches in terms of both accuracy and precision. The hit rate in human identification is also higher compared to the other state-of-art methods.

摘要

法医牙科学因其坚固性而通过牙齿特征来识别个体。传统的身份识别方法需要更多人工操作,且难以用于大量图像。本文提出了一种利用深度学习方法实现身份识别过程自动化的新方法。使用AlexNet进行迁移学习分三个阶段应用:在第一阶段,提取查询牙齿图像的特征,并确定其位置在上颌或下颌。在迁移学习的第二阶段,然后将牙齿分类为磨牙、前磨牙、犬齿或门牙这四类中的任何一类。在最后阶段,根据通用编号系统对分类后的牙齿进行编号,最后以距离为度量进行候选身份识别。这项工作中提出的这三个阶段的迁移学习方法有助于在候选匹配过程中减少搜索空间。此外,该方法不是让网络将所有32颗牙齿分类为32个不同类别,而是在每个阶段减少分配给分类层的类别数量,从而提高网络性能。这项工作在准确性和精确性方面均优于传统方法。与其他现有技术方法相比,身份识别的命中率也更高。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验