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Automation of gender determination in human canines using artificial intelligence

机译:使用人工智能自动确定人类犬的性别

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Background: Gender determination is an important aspect of the identification process. The tooth represents a part of the human body that indicates the nature of sexual dimorphism. Artificial intelligence enables computers to perform to the same standard the same tasks as those carried out by humans. Several methods of classification exist within an artificial intelligence approach to identifying sexual dimorphism in canines. Purpose: This study aimed to quantify the respective accuracy of the Naive Bayes, decision tree, and multi-layer perceptron (MLP) methods in identifying sexual dimorphism in canines. Methods: A sample of results derived from 100 measurements of the diameter of mesiodistal, buccolingual, and diagonal upper and lower canine jaw models of both genders were entered into an application computer program that implements the algorithm (MLP). The analytical process was conducted by the program to obtain a classification model with testing being subsequently carried out in order to obtain 50 new measurement results, 25 each for males and females. A comparative analysis was conducted on the program-generated information. Results: The accuracy rate of the Naive Bayes method was 82%, while that of the decision tree and MLP amounted to 84%. The MLP method had an absolute error value lower than that of its decision tree counterpart. Conclusion: The use of artificial intelligence methods produced a highly accurate identification process relating to the gender determination of canine teeth. The most appropriate method was the MLP with an accuracy rate of 84%.
机译:背景:性别确定是识别过程的重要方面。牙齿代表人体的一部分,表明性二态性的性质。人工智能使计算机能够按照与人类执行的相同的标准执行相同的任务。人工智能方法中存在几种用于识别犬类性二态性的分类方法。目的:本研究旨在量化朴素贝叶斯,决策树和多层感知器(MLP)方法在识别犬性二态性中的各自准确性。方法:将对两种性别的近中颌,颊舌和对角上下颌颌模型进行100次测量得到的结果样本输入到实施该算法(MLP)的应用计算机程序中。该程序执行了分析过程,以获取分类模型,随后进行测试以获取50个新的测量结果,男性和女性分别获得25个。对程序生成的信息进行了比较分析。结果:朴素贝叶斯方法的准确率为82%,决策树和MLP的准确率为84%。 MLP方法的绝对误差值低于决策树对应的绝对误差值。结论:人工智能方法的使用产生了与犬牙性别确定有关的高度准确的识别过程。最合适的方法是MLP,准确率为84%。

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