Deep multitask learning for gait-based biometrics - Robotics Institute Carnegie Mellon University

Deep multitask learning for gait-based biometrics

M. Marin-Jimnez, F. Castro, N. Guil, F. De la Torre, and R. Medina-Carnicer
Conference Paper, Proceedings of IEEE International Conference on Image Processing (ICIP '17), pp. 106 - 110, September, 2017

Abstract

The task of identifying people by the way they walk is known as "gait recognition". Although gait is mainly used for identification, additional tasks as gender recognition or age estimation may be addressed based on gait as well. In such cases, traditional approaches consider those tasks as independent ones, defining separated task-specific features and models for them. This paper shows that by training jointly more than one gait-based tasks, the identification task converges faster than when it is trained independently, and the recognition performance of multi-task models is equal or superior to more complex single-task ones. Our model is a multi-task CNN that receives as input a fixed-length sequence of optical flow channels and outputs several biometric features (identity, gender and age).

BibTeX

@conference{Marin-Jimnez-2017-120878,
author = {M. Marin-Jimnez and F. Castro and N. Guil and F. De la Torre and R. Medina-Carnicer},
title = {Deep multitask learning for gait-based biometrics},
booktitle = {Proceedings of IEEE International Conference on Image Processing (ICIP '17)},
year = {2017},
month = {September},
pages = {106 - 110},
}