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A neural network based on SPD manifold learning for skeleton-based hand gesture recognition

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This paper proposes a new neural network based on SPD manifold learning for skeleton-based hand gesture recognition. Given the stream of hand's joint positions, our approach combines two aggregation processes on respectively spatial and temporal domains. The pipeline of our network architecture consists in three main stages. The first stage is based on a convolutional layer to increase the discriminative power of learned features. The second stage relies on different architectures for spatial and temporal Gaussian aggregation of joint features. The third stage learns a final SPD matrix from skeletal data. A new type of layer is proposed for the third stage, based on a variant of stochastic gradient descent on Stiefel manifolds. The proposed network is validated on two challenging datasets and shows state-of-the-art accuracies on both datasets.

Xuan Son Nguyen, Luc Brun, Olivier L\'ezoray, S\'ebastien Bougleux• 2019

Related benchmarks

TaskDatasetResultRank
Hand Gesture RecognitionDHG 14 gestures
Accuracy87.3
18
Hand Gesture RecognitionDHG 28 gestures
Accuracy83.4
18
Skeleton-based Hand Gesture RecognitionSHREC 14 gestures
Accuracy94.3
12
Skeleton-based Hand Gesture RecognitionSHREC 28 gestures 14
Accuracy89.4
5
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