Deep Learning Analysis and Age Prediction from Shoeprints
Muhammad Hassan (1), Yan Wang (1), Di Wang (2), Daixi Li (3), Yanchun, Liang (1), You Zhou (1,2), Dong Xu (4) ((1) Computer Science and, Technology, Jilin University, Changchun, (2) Joint NTU-UBC Research Centre of, Excellence in Active Living for the Elderly

TL;DR
This paper introduces ShoeNet, a deep learning model that analyzes shoeprints to accurately predict age and gender, revealing age-related gait patterns and pressure distributions useful for forensic, medical, and biometric applications.
Contribution
The study presents a novel end-to-end deep learning approach using shoeprints to predict age and gender, highlighting asymmetric features and pressure patterns linked to aging.
Findings
40.23% of predictions within 5 years of actual age
Gender classification accuracy of 86.07%
Age-related pressure distribution patterns identified
Abstract
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…
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Taxonomy
TopicsGait Recognition and Analysis · Human Pose and Action Recognition · Forensic Anthropology and Bioarchaeology Studies
