锁骨性别决定的深度学习:一项泰国人口的盲法研究

Kewalee Pichetpan, Phruksachat Singsuwan, A. Sinthubua, Patison Palee, P. Mahakkanukrauh
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引用次数: 0

摘要

从骨骼中确定性别是生物鉴定的首要步骤。锁骨在尸检和鉴定中很有帮助,可以确定性别。我们采用了先前的深度学习方法来确定锁骨的性别。我们使用GoogLeNet(卷积神经网络的一个子集)的深度网络设计器来训练模型,并获得了研究结果的最佳训练模型。本研究的目的是为盲测提供锁骨各侧视图的最佳训练模型,并获得准确的泰国人群盲测集。以50对锁骨为实验组(女性25对,男性25对)。对于深度学习方法,对锁骨进行拍照,并将每张锁骨图像提交给训练模型进行性别确定。每组50个样品。输入相同尺寸的图像进行盲法研究。采用描述性统计方法对盲测准确率进行统计分析。在对来自GoogLeNet的模型进行训练后,我们从所有实验中挑选出最好的训练模型,并将该模型带到盲数据集测试中,得到盲测试集准确性的结果,从而找到测试盲数据集准确性的训练模型。本研究的结果发现,在锁骨整体左下位视图最高的盲测组中,准确率为92%。从锁骨的每个视图的测试集的准确性可以证明性别鉴定的法医价值。使用锁骨的深度学习可以确定性别,并且对法医人类学专家来说非常友好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning for sex determination of the clavicle: A blind study on a Thai population
Sex determination from bone is a primary step in biological identification. Clavicles are helpful in autopsies and identification that can lead to sex determination. We employed a previous deep learning method for the sex determination of the clavicle. We trained the model using a deep network designer of the GoogLeNet (a subset of the convolutional neural network) and received the best training model for the study results. This study's goal was to bring the optimal training model of each side view of the clavicle for a blind test and obtain an accurate blind test set on a Thai population. The total sample consisted of 50 pairs of clavicles as a test group (25 females, 25 males). For the deep learning approach, the clavicle was photographed, and each clavicle image was submitted to the training model for sex determination. Test groups of 50 samples were made. Images of the same size were input to test for blind study. The percentage of blind test accuracy was included in the statistical analysis using descriptive statistics. After training the model from GoogLeNet, we discovered the training model to test a blind dataset accuracy by picking the best of the training model from all experiments and bringing the model to test a blind dataset and get the result of blind test set accuracy. The results of this study found accuracies for a blind test set with the highest overall left inferior view of the clavicle with an accuracy of 92%. Accuracy from the test set of each view of the clavicle can demonstrate the forensic value of sex determination. Deep learning using a clavicle can determine the sex and is user friendly for forensic anthropology specialists.
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