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Backpropagation Neural Network for Sex Determination from Patella in Forensic Anthropology

机译:对法医人类学髌骨中髌骨性别测定的反向化神经网络

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Forensic anthropology is a discipline that concerned on postmortem identification from skeletal remains in sex determination. In sex determination, besides empirical techniques such as Discriminant Function Analysis (DFA), Artificial Intelligence techniques such as Artificial Neural Network (ANN) should be considered to get more accurate result. This paper proposes back propagation ANN model for sex determination. By using data and DFA result from previous work, this paper compares the result with the result of ANN model obtained from the experiment. A total sample data of 113 patellae has been generated based on statistics values of previous study. The data is divided into three groups of ages (young, middle, and old) and is measured using three parameters (width, height, and thickness). The ANN model produces average accuracy until 96.1% compared to 92.9% result from DFA technique. This concludes that ANN produces more accurate result in sex determination compared to DFA.
机译:法医人类学是一项涉及从骨骼遗骸的后期核查遗骸的学科。在性测定中,除了诸如判别函数分析(DFA)的经验技术外,应考虑诸如人工神经网络(ANN)的人工智能技术,以获得更准确的结果。本文提出了对性别测定的反向传播ANN模型。通过使用以前的工作中的数据和DFA结果,本文将结果与从实验中获得的ANN模型的结果进行比较。基于先前研究的统计值生成了113个髌骨的总样本数据。数据分为三组年龄(杨,中,旧的),使用三个参数(宽度,高度和厚度)测量。 ANN模型产生平均精度,直到96.1%,而DFA技术导致92.9%。与DFA相比,ANN在与DFA相比,ANN产生更准确的性别测定结果。

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