Multi-Task and Multi-Modal Learning for RGB Dynamic Gesture Recognition
Dinghao Fan, Hengjie Lu, Shugong Xu, Shan Cao

TL;DR
This paper introduces an end-to-end multi-task learning framework that leverages depth data during training to enhance RGB-based gesture recognition, achieving superior accuracy while reducing sensor requirements during inference.
Contribution
It proposes a novel multi-task learning approach with a Multi-Scale-Decoder module that uses depth information for training, improving RGB gesture recognition without additional sensors during testing.
Findings
Outperforms existing gesture recognition methods on three datasets.
The MSD module improves accuracy when integrated into other CNN frameworks.
Uses depth data only during training to enhance RGB gesture recognition.
Abstract
Gesture recognition is getting more and more popular due to various application possibilities in human-machine interaction. Existing multi-modal gesture recognition systems take multi-modal data as input to improve accuracy, but such methods require more modality sensors, which will greatly limit their application scenarios. Therefore we propose an end-to-end multi-task learning framework in training 2D convolutional neural networks. The framework can use the depth modality to improve accuracy during training and save costs by using only RGB modality during inference. Our framework is trained to learn a representation for multi-task learning: gesture segmentation and gesture recognition. Depth modality contains the prior information for the location of the gesture. Therefore it can be used as the supervision for gesture segmentation. A plug-and-play module named Multi-Scale-Decoder is…
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