Samenvatting
Tactile hand gesture recognition is a crucial task for user control in the automotive sector, where Human-Machine Interactions (HMI) demand low latency and high energy efficiency. This study addresses the challenges of power-constrained edge training and inference by utilizing analog Resistive Random Access Memory (ReRAM) technology in conjunction with a real tactile hand gesture dataset. By optimizing the input space through a feature engineering strategy, we avoid relying on large-scale crossbar arrays, making the system more suitable for edge deployment. Through realistic hardware-aware simulations that account for device non-idealities derived from experimental data, we demonstrate the functionalities of our analog ReRAM-based analog in-memory computing for on-chip training, utilizing the state-of-the-art Tiki-Taka algorithm. Furthermore, we validate the classification accuracy of approximately 91.4% for post-deployment inference of hand gestures. The results highlight the potential of analog ReRAM technology and crossbar architecture with fully parallelized matrix computations for real-time HMI systems at the Edge.
| Originele taal-2 | Engels |
|---|---|
| Uitgever | arXiv.org |
| Aantal pagina's | 5 |
| Volume | 2502.18152 |
| DOI's | |
| Status | Gepubliceerd - 25 feb. 2025 |
| Extern gepubliceerd | Ja |
Bibliografische nota
Accepted in IEEE ISCAS 2025Duurzame ontwikkelingsdoelstellingen van de VN
Deze output draagt bij aan de volgende duurzame ontwikkelingsdoelstelling(en)
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SDG 7 – Betaalbare en schone energie
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