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Improving the Performance of Unimodal Dynamic Hand-Gesture Recognition with Multimodal Training

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We present an efficient approach for leveraging the knowledge from multiple modalities in training unimodal 3D convolutional neural networks (3D-CNNs) for the task of dynamic hand gesture recognition. Instead of explicitly combining multimodal information, which is commonplace in many state-of-the-art methods, we propose a different framework in which we embed the knowledge of multiple modalities in individual networks so that each unimodal network can achieve an improved performance. In particular, we dedicate separate networks per available modality and enforce them to collaborate and learn to develop networks with common semantics and better representations. We introduce a "spatiotemporal semantic alignment" loss (SSA) to align the content of the features from different networks. In addition, we regularize this loss with our proposed "focal regularization parameter" to avoid negative knowledge transfer. Experimental results show that our framework improves the test time recognition accuracy of unimodal networks, and provides the state-of-the-art performance on various dynamic hand gesture recognition datasets.

Mahdi Abavisani, Hamid Reza Vaezi Joze, Vishal M. Patel• 2018

Related benchmarks

TaskDatasetResultRank
Gesture RecognitionnvGesture (test)
Accuracy (%)85.48
115
Hand Gesture RecognitionNVGesture
Accuracy86.93
23
Hand Gesture RecognitionEgoGesture (test)
Accuracy93.87
21
Hand Gesture RecognitionNVGesture 2016 (test)
Accuracy84.85
17
Hand Gesture RecognitionVIVA hand gesture dataset (8-fold cross-subject)
Accuracy81.33
10
Hand Gesture RecognitionVIVA
Accuracy86.08
6
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