<?xml version="1.0"?>
<rdf:RDF xmlns:rdf="http://www.w3.org/1999/02/22-rdf-syntax-ns#" xmlns:dc="http://purl.org/dc/elements/1.1/"><rdf:Description rdf:about="https://repozitorij.upr.si/IzpisGradiva.php?id=23158"><dc:title>Efficient material selection for training occluded mmWave radar-based gesture recognisers</dc:title><dc:creator>Attygalle,	Nuwan	(Avtor)
	</dc:creator><dc:creator>Leiva,	Luis A.	(Avtor)
	</dc:creator><dc:creator>Kljun,	Matjaž	(Avtor)
	</dc:creator><dc:creator>Čopič Pucihar,	Klen	(Avtor)
	</dc:creator><dc:subject>deep learning</dc:subject><dc:subject>training optimization for neural networks</dc:subject><dc:subject>millimetre-wave radar</dc:subject><dc:subject>gesture recognition</dc:subject><dc:subject>material selection</dc:subject><dc:subject>sampling</dc:subject><dc:subject>synthetic noise</dc:subject><dc:description>Radar-based gesture recognition has emerged as a promising approach for unobtrusive interaction. Unlike camera-based systems, radar sensors can detect gestures through opaque materials, enabling seamless embedding into various everyday objects. However, it remains unclear how to train models efficiently for robust gesture recognition through diverse materials. To investigate this, we collected a dataset of 17,520 gesture recordings performed through 73 everyday materials. By comparing several material-sampling and data-augmentation strategies, we found that a small carefully selected representative subset of training materials was sufficient to match performance of a classifier trained on the full material dataset. Our results showed that the models trained on 14 quota-sampled materials achieved accuracies of 95.8% and 91.2%, comparable to training on all 73 materials (96.8% and 91.6%) and significantly better than training without material data (66.8% and 65.8%). Among the evaluated sampling approaches, Quota sampling also provided the best overall trade-off between performance and practicality. In contrast, classifiers trained on augmented data performed worse than those trained on actual material-specific data. Taken together, these findings indicate that, for the tested sensor, gesture set, and material collection, carefully selected real-material data offer a practical route to reducing material-specific data collection in radar-based gesture recognition while preserving generalisation. Code, models, and data are available in the public repository, with additional details provided in the supplementary materials: https://gitlab.com/hicuplab/seeing-through.</dc:description><dc:date>2026</dc:date><dc:date>2026-06-19 09:24:32</dc:date><dc:type>Članek v reviji</dc:type><dc:identifier>23158</dc:identifier><dc:language>sl</dc:language></rdf:Description></rdf:RDF>
