论文标题

深度学习分析和年龄预测

Deep Learning Analysis and Age Prediction from Shoeprints

论文作者

Hassan, Muhammad, Wang, Yan, Wang, Di, Li, Daixi, Liang, Yanchun, Zhou, You, Xu, Dong

论文摘要

人的步行和步态涉及几个复杂的身体部位,并受到个性,情绪,社会和文化特征以及衰老的影响。这些因素反映在shoeprints中,这又可以用来预测年龄,这个问题尚未使用任何计算方法系统地解决。我们收集了100,000个从7到80年的受试者,并使用数据开发了深度学习的端到端模型鞋带,以分析与年龄相关的模式并预测年龄。该模型使用跳过机制将各种卷积神经网络模型集成在一起,以提取与年龄相关的特征,尤其是在配对浅色的压力和磨损区域中。结果表明,40.23%的受试者在5岁以内的预测错误,性别分类的预测准确性达到86.07%。有趣的是,与年龄相关的特征主要存在于左侧和右图之间的不对称差异。该分析还揭示了脚踏板的压力分布中有趣的与年龄相关的和性别相关的模式。特别是,压力力从脚趾的中部向外部地区散布,而脚后跟区域的性别特定变化。这样的统计数据提供了有关法医研究,步态疾病的医学研究,生物识别和体育研究的新方法的见解。

Human walking and gaits involve several complex body parts and are influenced by personality, mood, social and cultural traits, and aging. These factors are reflected in shoeprints, which in turn can be used to predict age, a problem not systematically addressed using any computational approach. We collected 100,000 shoeprints of subjects ranging from 7 to 80 years old and used the data to develop a deep learning end-to-end model ShoeNet to analyze age-related patterns and predict age. The model integrates various convolutional neural network models together using a skip mechanism to extract age-related features, especially in pressure and abrasion regions from pair-wise shoeprints. The results show that 40.23% of the subjects had prediction errors within 5-years of age and the prediction accuracy for gender classification reached 86.07%. Interestingly, the age-related features mostly reside in the asymmetric differences between left and right shoeprints. The analysis also reveals interesting age-related and gender-related patterns in the pressure distributions on shoeprints; in particular, the pressure forces spread from the middle of the toe toward outside regions over age with gender-specific variations on heel regions. Such statistics provide insight into new methods for forensic investigations, medical studies of gait-pattern disorders, biometrics, and sport studies.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源