Title of article :
Sex Determination of Three-Dimensional Skull Based on Improved Backpropagation Neural Network
Author/Authors :
Yang, Wen Northwest University - Xi’an, China , Liu, Xiaoning Northwest University - Xi’an, China , Wang, Kegang Ankang University - Ankang, China , Hu, Jiabei Northwest University - Xi’an, China , Geng, Guohua Northwest University - Xi’an, China , Feng, Jun Northwest University - Xi’an, China
Abstract :
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 η = 0.5 and α = 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.
Keywords :
Sex Determination , Three-Dimensional , Skull , BPNN
Journal title :
Computational and Mathematical Methods in Medicine