D. Nasien, M. H. Adiya, Iis Afrianty, N. A. Ali, Azurah A. Samah, Y. Rahayu
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引用次数: 1
摘要
法医人类学涵盖的主题之一是对骨骼遗骸的调查,其中骨骼的各种特性将被确定。通常,发现的样本是不完整的,这意味着一些骨骼部分缺失或被破坏,分析需要依赖于从现有信息中获得的有限信息。本研究以手臂、腿、锁骨、肩胛骨为主要研究对象,共8个骨部分。每个部分要么独立于其他部分使用,要么一起考虑(聚合),以测试其在面对这种情况时查找所有者身份的可用性。从数据库中获得的骨骼测量数据被用作两种不同分类器的输入数据,即人工神经网络和支持向量机,有两个识别目标,即性别和种族。所有输入的数据都来自公开可用的Robert J. Terry解剖骨骼收集颅后骨测量数据库。对于使用锁骨和骨料的目标,准确率分别为86.67%和70.78%,这表明使用所有可能的样本信息而不是专注于单个骨骼部分有时有助于提高识别精度。
Determination of Sex and Race in Forensic Anthropology: A Comparison of Artificial Neural Network and Support Vector Machine
One of the topics covered in forensic anthropology is an investigation of skeletal remains where various properties of the skeleton are to be determined. Typically, the sample found is incomplete, meaning some bone parts are missing or destroyed, and the analysis needs to depend on limited information obtained from what is available. This research focuses on arm, leg, clavicle, and scapula bones, with 8 bone parts in total. Each part is either used independently from the other or considered altogether (aggregate) to test its usability in finding out the owner’s identity when facing such a situation. Bone measurements obtained from the database were used as input data for two different classifiers, namely artificial neural networks and supporting vector machines, with two identification targets, namely sex and race. All of the input data came from publicly available Robert J. Terry Anatomical Skeletal Collection Postcranial Osteo-metric database. Accuracies of 86.67% and 70.78% are obtained for those targets using clavicle and aggregate, respectively, showing that using all information possible from the sample rather than focusing on a single bone part is sometimes useful in improving identification accuracy.