Multi-level Binarized LSTM in EEG Classification for Wearable Devices

April 19, 2020 ยท Declared Dead ยท ๐Ÿ› International Euromicro Conference on Parallel, Distributed and Network-Based Processing

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Authors Najmeh Nazari, Seyed Ahmad Mirsalari, Sima Sinaei, Mostafa E. Salehi, Masoud Daneshtalab arXiv ID 2004.11206 Category cs.LG: Machine Learning Cross-listed cs.DC, eess.SP Citations 13 Venue International Euromicro Conference on Parallel, Distributed and Network-Based Processing Last Checked 3 months ago
Abstract
Long Short-Term Memory (LSTM) is widely used in various sequential applications. Complex LSTMs could be hardly deployed on wearable and resourced-limited devices due to the huge amount of computations and memory requirements. Binary LSTMs are introduced to cope with this problem, however, they lead to significant accuracy loss in some application such as EEG classification which is essential to be deployed in wearable devices. In this paper, we propose an efficient multi-level binarized LSTM which has significantly reduced computations whereas ensuring an accuracy pretty close to full precision LSTM. By deploying 5-level binarized weights and inputs, our method reduces area and delay of MAC operation about 31* and 27* in 65nm technology, respectively with less than 0.01% accuracy loss. In contrast to many compute-intensive deep-learning approaches, the proposed algorithm is lightweight, and therefore, brings performance efficiency with accurate LSTM-based EEG classification to real-time wearable devices.
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