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Ancestry Estimation of Skull in Chinese Population Based on Improved Convolutional Neural Network

机译:基于改进卷积神经网络的中国人口颅骨的祖先估算

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The estimation of ancestry is an essential benchmark for positive identification of heavily decomposed bodies that are recovered in a variety of death and crime scenes. Aiming at the problem of skull ancestry estimation, this paper proposes an improved convolutional neural network method to realize ancestry estimation. We use the six-angle images of the skull as the input of the network. By improving the basic model LeNet5 of the convolutional neural network, we preserve the depth semantics and content information of the image, reduce the number of parameters, and ensure the learning ability of network features. In the experiment, 156 yellow skulls from northern China and 178 white skulls from Xinjiang were used as subjects, 80% of skull samples were used as training sets and 20% as test sets. Experiments on the training set and test set show that the improved CNN network architecture achieves 95.88% accuracy on the training set and 95.52% accuracy on the test set. In addition, we also designed experiments on the contribution of various parts of the skull to ancestor identification. The experimental results show that each region of the skull is useful for ancestor identification, but the effect is different. Compared with other networks, the network structure of this paper has the highest accuracy and better performance.
机译:祖先的估计是积极识别在各种死亡和犯罪场景中恢复的严重分解体的基本基准。旨在颅骨血统估计的问题,本文提出了一种改进的卷积神经网络方法来实现血统估算。我们使用骷髅的六角图像作为网络的输入。通过改进卷积神经网络的基本模型5,我们保留图像的深度语义和内容信息,减少参数的数量,并确保网络特征的学习能力。在实验中,来自中国北部的156个黄色头骨和来自新疆的178个白色头骨被用作受试者,80%的颅骨样品用作训练集和20%作为测试集。培训集和测试集的实验表明,改进的CNN网络架构在训练集中实现了95.88%的准确性,测试集上的95.52%的精度。此外,我们还为祖先识别设计了对颅骨的各个部分的贡献的实验。实验结果表明,颅骨的每个区域对于祖先鉴定是有用的,但效果是不同的。与其他网络相比,本文的网络结构具有最高的准确性和更好的性能。

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