LGSPNAOct 4, 2021

A manifold learning approach for gesture recognition from micro-Doppler radar measurements

arXiv:2110.01670v42 citations
Originality Incremental advance
AI Analysis

This work addresses gesture recognition for radar applications, offering a more efficient alternative to deep learning methods, though it is incremental as it builds on prior kernel-based approaches.

The paper analyzes the error behavior of a kernel-based manifold learning method for gesture recognition from micro-Doppler radar data, showing it achieves near-competitive performance to deep neural networks with improvements in training speed and memory requirements.

A recent paper (Neural Networks, {\bf 132} (2020), 253-268) introduces a straightforward and simple kernel based approximation for manifold learning that does not require the knowledge of anything about the manifold, except for its dimension. In this paper, we examine how the pointwise error in approximation using least squares optimization based on similarly localized kernels depends upon the data characteristics and deteriorates as one goes away from the training data. The theory is presented with an abstract localized kernel, which can utilize any prior knowledge about the data being located on an unknown sub-manifold of a known manifold. We demonstrate the performance of our approach using a publicly available micro-Doppler data set, and investigate the use of different preprocessing measures, kernels, and manifold dimensions. Specifically, it is shown that the localized kernel introduced in the above mentioned paper when used with PCA components leads to a near-competitive performance to deep neural networks, and offers significant improvements in training speed and memory requirements. To demonstrate the fact that our methods are agnostic to the domain knowledge, we examine the classification problem in a simple video data set.

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