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A 3DCNN-LSTM Multi-Class Temporal Segmentation for Hand Gesture Recognition

Letizia Gionfrida, W. M. R. Rusli, Angela E. Kedgley, Anil A. Bharath

2022Electronics13 citationsDOIOpen Access PDF

Abstract

This paper introduces a multi-class hand gesture recognition model developed to identify a set of hand gesture sequences from two-dimensional RGB video recordings, using both the appearance and spatiotemporal parameters of consecutive frames. The classifier utilizes a convolutional-based network combined with a long-short-term memory unit. To leverage the need for a large-scale dataset, the model deploys training on a public dataset, adopting a technique known as transfer learning to fine-tune the architecture on the hand gestures of relevance. Validation curves performed over a batch size of 64 indicate an accuracy of 93.95% (±0.37) with a mean Jaccard index of 0.812 (±0.105) for 22 participants. The fine-tuned architecture illustrates the possibility of refining a model with a small set of data (113,410 fully labelled image frames) to cover previously unknown hand gestures. The main contribution of this work includes a custom hand gesture recognition network driven by monocular RGB video sequences that outperform previous temporal segmentation models, embracing a small-sized architecture that facilitates wide adoption.

Topics & Concepts

Computer scienceJaccard indexArtificial intelligenceGestureGesture recognitionRGB color modelConvolutional neural networkLeverage (statistics)SegmentationClassifier (UML)Transfer of learningPattern recognition (psychology)Computer visionDeep learningHand Gesture Recognition SystemsHuman Pose and Action RecognitionHearing Impairment and Communication
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