SPLGOct 14, 2020

Binarization Methods for Motor-Imagery Brain-Computer Interface Classification

arXiv:2010.07004v1
Originality Incremental advance
AI Analysis

This work addresses efficiency problems for real-time MI-BCI applications on low-power devices, though it is incremental as it builds on existing feature extraction and CNN approaches.

The paper tackles the challenge of deploying motor-imagery brain-computer interface (MI-BCI) models on resource-constrained devices by proposing binarization methods for real-valued weights, achieving near-identical accuracy (≤1.27% lower) in 4-class MI with more compact models and simpler operations.

Successful motor-imagery brain-computer interface (MI-BCI) algorithms either extract a large number of handcrafted features and train a classifier, or combine feature extraction and classification within deep convolutional neural networks (CNNs). Both approaches typically result in a set of real-valued weights, that pose challenges when targeting real-time execution on tightly resource-constrained devices. We propose methods for each of these approaches that allow transforming real-valued weights to binary numbers for efficient inference. Our first method, based on sparse bipolar random projection, projects a large number of real-valued Riemannian covariance features to a binary space, where a linear SVM classifier can be learned with binary weights too. By tuning the dimension of the binary embedding, we achieve almost the same accuracy in 4-class MI ($\leq$1.27% lower) compared to models with float16 weights, yet delivering a more compact model with simpler operations to execute. Second, we propose to use memory-augmented neural networks (MANNs) for MI-BCI such that the augmented memory is binarized. Our method replaces the fully connected layer of CNNs with a binary augmented memory using bipolar random projection, or learned projection. Our experimental results on EEGNet, an already compact CNN for MI-BCI, show that it can be compressed by 1.28x at iso-accuracy using the random projection. On the other hand, using the learned projection provides 3.89% higher accuracy but increases the memory size by 28.10x.

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