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"VLSI Architecture Design Methodology for Deep learning based Upper Limb ..."
Anagha Nimbekar et al. (2022)
- Anagha Nimbekar, Y. V. Sai Dinesh
, Arvind Gautam, Vidhumouli Hunsigida, Appa Rao Nali, Amit Acharyya:
VLSI Architecture Design Methodology for Deep learning based Upper Limb and Lower Limb Movement Classification for Rehabilitation Application. LASCAS 2022: 1-4
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