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KMID : 1144120230130010073
Biomedical Engineering Letters
2023 Volume.13 No. 1 p.73 ~ p.83
Partially binarized neural networks for efficient spike sorting
Daniel Valencia

Amir Alimohammad
Abstract
While brain-implantable neural spike sorting can be realized using efficient algorithms, the presence of noise may make it difficult to maintain high-peformance sorting using conventional techniques. In this article, we explore the use of partially binarized neural networks (PBNNs), to the best of our knowledge for the first time, for sorting of neural spike feature vectors. It is shown that compared to the waveform template-based methods, PBNNs offer robust spike sorting over various datasets and noise levels. The ASIC implementation of the PBNN-based spike sorting system in a standard 180-nm CMOS process is presented. The post place and route simulations results show that the synthesized PBNN consumes only 0.59 ¥ì
W of power from a 1.8 V supply while operating at 24 kHz and occupies 0.15 mm2
of silicon area. It is shown that the designed PBNN-based spike sorting system not only offers comparable accuracy to the state-of-the-art spike sorting systems over various noise levels and datasets, it also occupies a smaller silicon area and consumes less power and energy. This makes PBNNs a viable alternative towards the implementation of brain-implantable spike sorting systems.
KEYWORD
Neural networks, Brain-computer interfaces, Spike sorting, Application-specifc integrated circuits, Neural signal processing
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