Multimodal Gait Recognition Under Missing Modalities
Rub??n Delgado-Esca?ño, Francisco M. Castro, Nicol?s Guil, Vicky Kalogeiton, Manuel J. Mar??n-Jim??nez
-
SPS
IEEE Members: $11.00
Non-members: $15.00Length: 00:14:53
Multimodal systems for gait recognition have gained a lot of attention. However, there is a clear gap in the study of missing modalities, which represents real-life scenarios where sensors fail or data get corrupted. Here, we investigate how to handle missing modalities for gait recognition. We propose a single and flexible framework that uses a variable number of input modalities. For each modality, it consists of a branch and a binary unit indicating whether the modality is available; these are gated and merged together. Finally, it generates a single and compact 'multimodal' gait signature that encodes biometric information of the input. Our framework outperforms the state of the art on TUM-GAID and extensive experiments reveal its effectiveness for handling missing modalities even in the multi-view setup of CASIA-B.