Darmawan M F, Yusuf Suhaila M, Kadir M R Abdul, Haron H
Universiti Teknologi Malaysia, 81310 UTM Skudai, Johor, Malaysia.
Forensic Sci Int. 2015 Feb;247:130.e1-11. doi: 10.1016/j.forsciint.2014.11.007. Epub 2014 Nov 18.
Sex estimation is used in forensic anthropology to assist the identification of individual remains. However, the estimation techniques tend to be unique and applicable only to a certain population. This paper analyzed sex estimation on living individual child below 19 years old using the length of 19 bones of left hand applied for three classification techniques, which were Discriminant Function Analysis (DFA), Support Vector Machine (SVM) and Artificial Neural Network (ANN) multilayer perceptron. These techniques were carried out on X-ray images of the left hand taken from an Asian population data set. All the 19 bones of the left hand were measured using Free Image software, and all the techniques were performed using MATLAB. The group of age "16-19" years old and "7-9" years old were the groups that could be used for sex estimation with as their average of accuracy percentage was above 80%. ANN model was the best classification technique with the highest average of accuracy percentage in the two groups of age compared to other classification techniques. The results show that each classification technique has the best accuracy percentage on each different group of age.
性别估计在法医人类学中用于协助识别个体遗骸。然而,估计技术往往具有独特性,仅适用于特定人群。本文使用左手19块骨骼的长度,对19岁以下的在世个体儿童进行性别估计,并将其应用于三种分类技术,即判别函数分析(DFA)、支持向量机(SVM)和人工神经网络(ANN)多层感知器。这些技术是对从亚洲人群数据集中获取的左手X射线图像进行的。使用Free Image软件测量左手的所有19块骨骼,并使用MATLAB执行所有技术。“16 - 19”岁组和“7 - 9”岁组是可用于性别估计的组,因为它们的平均准确率高于80%。与其他分类技术相比,ANN模型是两组年龄中平均准确率最高的最佳分类技术。结果表明,每种分类技术在每个不同年龄组上都有最佳准确率。