Background:China is a multi-ethnic country.It is of great significance for the skull identification to realize the skull ethnic classification through computers,which can promote the development of forensic anthropolo...Background:China is a multi-ethnic country.It is of great significance for the skull identification to realize the skull ethnic classification through computers,which can promote the development of forensic anthropology and accelerate the exploration of national development.Methods:In this paper,the 3D skull model is transformed into 2D auxiliary image including curvature,depth and elevation information,and then the deep learning method of the 2D auxiliary image is used for ethnic classification.We construct a convolution neural network structure inspired by VGGNet16 which has achieved excellent performance on image classification.In order to optimize the network,Adam algorithm is adopted to avoid falling into local minimum,and to ensure the stability of the algorithm with regularization terms.Results:Experiments on 400 skull models have been conducted for ethnic classification by our method.We set different learning rates to compare the performance of the model,the highest accuracy of ethnic classification is 98.75%,which have better performance than other five classical neural network structures.Conclusions:Deep learning based on skull auxiliary image for skull ethnic classification is an automatic and effective method with great application significance.展开更多
基金This work was partly supported by the National Statistical Science Research Project(2020LY100)the National Natural Science Foundation of China(Nos.62172247 and 61702293)the Key Research and Development Plan—Major Scientific and Technological Innovation Projects of ShanDong Province(No.2019JZZY020101).
文摘Background:China is a multi-ethnic country.It is of great significance for the skull identification to realize the skull ethnic classification through computers,which can promote the development of forensic anthropology and accelerate the exploration of national development.Methods:In this paper,the 3D skull model is transformed into 2D auxiliary image including curvature,depth and elevation information,and then the deep learning method of the 2D auxiliary image is used for ethnic classification.We construct a convolution neural network structure inspired by VGGNet16 which has achieved excellent performance on image classification.In order to optimize the network,Adam algorithm is adopted to avoid falling into local minimum,and to ensure the stability of the algorithm with regularization terms.Results:Experiments on 400 skull models have been conducted for ethnic classification by our method.We set different learning rates to compare the performance of the model,the highest accuracy of ethnic classification is 98.75%,which have better performance than other five classical neural network structures.Conclusions:Deep learning based on skull auxiliary image for skull ethnic classification is an automatic and effective method with great application significance.