A Simple Channel Compression Method for Brain Signal Decoding on Classification Task
In the application of brain-computer interface (BCI), while pursuing accurate decoding of brain signals, we also need consider the computational efficiency of BCI devices. ECoG signals are multi-channel temporal signals which is collected using a high-density electrode array at a high sampling frequ...
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Zusammenfassung: | In the application of brain-computer interface (BCI), while pursuing accurate
decoding of brain signals, we also need consider the computational efficiency
of BCI devices. ECoG signals are multi-channel temporal signals which is
collected using a high-density electrode array at a high sampling frequency.
The data between channels has a high similarity or redundancy in the temporal
domain. The redundancy of data not only reduces the computational efficiency of
the model, but also overwhelms the extraction of effective features, resulting
in a decrease in performance. How to efficiently utilize ECoG multi-channel
signals is one of the research topics. Effective channel screening or
compression can greatly reduce the model size, thereby improving computational
efficiency, this would be a good direction to solve the problem. Based on
previous work [1], this paper proposes a very simple channel compression
method, which uses a learnable matrix to perform matrix multiplication on the
original channels, that is, assigning weights to the channels and then linearly
add them up. This effectively reduces the number of final channels. In the
experiment, we used the vision-based ECoG multi-classification dataset owned by
our laboratory to test the proposed channel selection (compression) method. We
found that the new method can compress the original 128-channel ECoG signal to
32 channels (of which subject MonJ is compressed to 8 channels), greatly
reducing the size of the model. The demand for GPU memory resources during
model training is reduced by about 68.57%, 84.33% for each subject
respectively; the model training speed also increased up around 3.82, 4.65
times of the original speed for each subject respectively. More importantly,
the performance of the model has improved by about 1.10% compared with our
previous work, reached the SOTA level of our unique visual based ECoG dataset |
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DOI: | 10.48550/arxiv.2412.02078 |