Yang Wen, Liu Xiaoning, Wang Kegang, Hu Jiabei, Geng Guohua, Feng Jun
College of Information Science and Technology, Northwest University, Xi'an, China.
College of Electronics and Information Engineering, Ankang University, Ankang, China.
Comput Math Methods Med. 2019 Jan 13;2019:9163547. doi: 10.1155/2019/9163547. eCollection 2019.
Sex determination from skeletons is a significant step in the analysis of forensic anthropology. Previous skeletal sex assessments were analyzed by anthropologists' subjective vision and sexually dimorphic features. In this paper, we proposed an improved backpropagation neural network (BPNN) to determine gender from skull. It adds the momentum term to improve the convergence speed and avoids falling into local minimum. The regularization operator is used to ensure the stability of the algorithm, and the Adaboost integration algorithm is used to improve the generalization ability of the model. 267 skulls were used in the experiment, of which 153 were females and 114 were males. Six characteristics of the skull measured by computer-aided measurement are used as the network inputs. There are two structures of BPNN for experiment, namely, [6; 6; 2] and [6; 12; 2], of which the [6; 12; 2] model has better average accuracy. While = 0.5 and = 0.9, the classification accuracy is the best. The accuracy rate of the training stage is 97.232%, and the mean squared error (MSE) is 0.01; the accuracy rate of the testing stage is 96.764%, and the MSE is 1.016. Compared with traditional methods, it has stronger learning ability, faster convergence speed, and higher classification accuracy.
从骨骼进行性别判定是法医人类学分析中的重要一步。以往的骨骼性别评估是由人类学家通过主观视觉和性二态特征进行分析的。在本文中,我们提出了一种改进的反向传播神经网络(BPNN)来从颅骨判定性别。它添加了动量项以提高收敛速度并避免陷入局部最小值。使用正则化算子来确保算法的稳定性,并使用Adaboost集成算法来提高模型的泛化能力。实验使用了267个颅骨,其中153个为女性,114个为男性。通过计算机辅助测量得到的颅骨的六个特征用作网络输入。有两种BPNN结构用于实验,即[6; 6; 2]和[6; 12; 2],其中[6; 12; 2]模型具有更好的平均准确率。当 = 0.5且 = 0.9时,分类准确率最佳。训练阶段的准确率为97.232%,均方误差(MSE)为0.01;测试阶段的准确率为96.764%,MSE为1.016。与传统方法相比,它具有更强的学习能力、更快的收敛速度和更高的分类准确率。