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Texture Based Person Identification Using Dental Radiographs and Photographs in Forensic Odontology

机译:纹理基于牙科射线照相和拍摄的人识别在法医神话中的照片

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Forensic Odontology is the evaluation of dental information that includes ante-mortem (AM) and post-mortem (PM) radiographs for the purpose of identifying person in some grave situations such as mass fatalities, natural disasters and terrorist attacks etc. One of the key issues in using dental images is that, although both the AM and the PM radiographs belong to the same person, there may be a mismatch between those radiographs due to the missing tooth in either of the radiographs. In such a case, the missing tooth in the radiograph has to be identified prior to the matching in order to achieve accurate identification of an individual. Thus an automatic algorithm for person identification in dental radiographs and photographs is a more challenging one at present. In this paper, texture based shape extraction algorithm is taken for analysis. Distance measures and classifier based approaches are the shape matching algorithm which is used to match both AM and PM images in order to obtain exact person identification. A novel approach has to be introduced for the extraction of the missing tooth, and subsequently each tooth in the radiograph is classified using k-NN classifier with Hu's moment invariants as feature. Then each individual tooth is separated with pulp, enamel and dentine is applied to GLCM texture features. In this paper, a novel framework has been proposed to improve the identification performance. Moreover, the proposed algorithm achieves an overall accuracy of 98% than the existing approaches.
机译:法医神话学是评估包括对验尸(AM)和验尸(PM)射线照相的牙科信息,以识别人在一些严重情况,如大规模死亡,自然灾害和恐怖主义攻击等中的一个人使用牙科图像的问题是,虽然AM和PM射线照片都属于同一个人,但由于任何射线照片中的缺失导致的那些射线照片之间可能存在不匹配。在这种情况下,必须在匹配之前识别出射线照片中的缺失的牙齿,以便实现个体的准确识别。因此,目前牙科射线照片和照片中的人识别的自动算法是一个更具挑战性的算法。本文采用了基于纹理的形状提取算法进行分析。距离测量和基于分类的方法是形状匹配算法,用于匹配AM和PM图像以获得确切的人识别。必须引入一种新的方法来提取缺失的牙齿,随后X线的每个牙齿使用K-NN分类器进行分类,其中HU的时刻不变。然后将每个单独的牙齿用纸浆分离,牙釉质和牙本质应用于GLCM纹理特征。本文提出了一种新颖的框架来改善识别性能。此外,所提出的算法总体精度为98%的方法比现有方法为98%。

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