Hyper-Dimensional Computing (HDC), a nanoscalable learning paradigm for low-energy predictions and lightweight models, has seen a surge in interest from the hardware accelerator community. Its statistical and distributed data representation leads to highly-efficient classifiers with inherent robustness to representation errors. A digital, 28nm CMOS chip, representing the first programmable HDC biosignal processor, achieves 25.6 nJ/pred. on a leading EMG gesture recognition dataset. Measurements confirm the high robustness of HDC: a 47% bit error-rate in the datapath by VDD overscaling leads to only 1.37% accuracy drop. This realization is the most efficient and robust EMG gesture classifier to date –its per-channel efficiency is 1312×that of Artificial Neural Networks and 76 million× that of Spiking Neural Networks.
Abstract:
Publication date:
January 1, 2023
Publication type:
Conference Paper