2016
DOI: 10.3390/s16122171
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Adaptive Local Spatiotemporal Features from RGB-D Data for One-Shot Learning Gesture Recognition

Abstract: Noise and constant empirical motion constraints affect the extraction of distinctive spatiotemporal features from one or a few samples per gesture class. To tackle these problems, an adaptive local spatiotemporal feature (ALSTF) using fused RGB-D data is proposed. First, motion regions of interest (MRoIs) are adaptively extracted using grayscale and depth velocity variance information to greatly reduce the impact of noise. Then, corners are used as keypoints if their depth, and velocities of grayscale and of d… Show more

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Cited by 5 publications
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