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BioCNN: A Hardware Inference Engine for EEG-Based Emotion Detection

Cited 21 time in Web of Science Cited 29 time in Scopus
Authors

Gonzalez, Hector A.; Muzaffar, Shahzad; Yoo, Jerald; Elfadel, Ibrahim M.

Issue Date
2020
Publisher
Institute of Electrical and Electronics Engineers Inc.
Citation
IEEE Access, Vol.8, pp.140896-140914
Abstract
EEG-based emotion classifiers have the potential of significantly improving the social integration of patients suffering from neurological disorders such as Amyotrophic Lateral Sclerosis or the acute stages of Alzheimer's disease. Emotion classifiers have historically used software on general-purpose computers and operating under off-line conditions. Yet the wearability of such classifiers is a must if they are to enable the socialization of critical-care patients. Such wearability requires the use of low-power hardware accelerators that would enable near real-time classification and extended periods of operations. In this article, we architect, design, implement, and test a handcrafted, hardware Convolutional Neural Network, named BioCNN, optimized for EEG-based emotion detection and other bio-medical applications. The EEG signals are generated using a low-cost, off-the-shelf device, namely, Emotiv Epoc C, and then denoised and pre-processed ahead of their use by BioCNN. For training and testing, BioCNN uses three repositories of emotion classification datasets, including the publicly available DEAP and DREAMER datasets, along with an original dataset collected in-house from 5 healthy subjects using standard visual stimuli. Asubject-specific training approach is used under TensorFlow to train BioCNN, which is implemented using the Digilent Atlys Board with a low-cost Spartan-6 FPGA. The experimental results show a competitive energy efficiency of 11 GOps/W, a throughput of 1:65 GOps that is in line with the real-time specification of a wearable device, and a latency of less than 1 ms, which is smaller than the 150 ms required for human interaction times. Its emotion inference accuracy is competitive with the top software-based emotion detectors.
ISSN
2169-3536
URI
https://hdl.handle.net/10371/200807
DOI
https://doi.org/10.1109/ACCESS.2020.3012900
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Yoo, Jerald유담
부교수
  • College of Engineering
  • Department of Electrical and Computer Engineering
Research Area Biomedical Applications, Energy-Efficient Integrated Circuits

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