Adaptive Down-Sampling and Dimension Reduction in Time Elastic Kernel Machines for Efficient Recognition of Isolated Gestures
Pierre-Fran\c{c}ois Marteau (EXPRESSION), Sylvie Gibet (EXPRESSION),, Cl\'ement Reverdy (EXPRESSION)

TL;DR
This paper proposes a method combining adaptive down-sampling and feature selection to reduce the dimensionality of gesture data matrices, improving efficiency in elastic kernel-based recognition of isolated gestures.
Contribution
It introduces a novel approach that reduces both feature and temporal dimensions of gesture data matrices, enhancing computational efficiency in elastic distance-based recognition.
Findings
Significant reduction in data size without loss of recognition accuracy
Adaptive down-sampling outperforms regular down-sampling in movement reconstruction
Approach is effective across different gesture datasets
Abstract
In the scope of gestural action recognition, the size of the feature vector representing movements is in general quite large especially when full body movements are considered. Furthermore, this feature vector evolves during the movement performance so that a complete movement is fully represented by a matrix M of size DxT , whose element M i, j represents the value of feature i at timestamps j. Many studies have addressed dimensionality reduction considering only the size of the feature vector lying in R D to reduce both the variability of gestural sequences expressed in the reduced space, and the computational complexity of their processing. In return, very few of these methods have explicitly addressed the dimensionality reduction along the time axis. Yet this is a major issue when considering the use of elastic distances which are characterized by a quadratic complexity along the…
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