Hybrid Spiking Neural Networks for Low-Power Intra-Cortical Brain-Machine Interfaces
Alexandru Vasilache, Jann Krausse, Klaus Knobloch, Juergen Becker

TL;DR
This paper proposes hybrid spiking neural networks for wireless intra-cortical brain-machine interfaces, achieving high decoding accuracy with low power consumption, enabling more scalable and mobile neuroprosthetic devices.
Contribution
It introduces a novel hybrid neural decoding approach combining convolutional and recurrent spiking networks, evaluated on a primate dataset, surpassing existing models in accuracy and efficiency.
Findings
High decoding accuracy for primate movement velocities.
Low synaptic operations for energy-efficient processing.
Outperforms baseline models in NeuroBench framework.
Abstract
Intra-cortical brain-machine interfaces (iBMIs) have the potential to dramatically improve the lives of people with paraplegia by restoring their ability to perform daily activities. However, current iBMIs suffer from scalability and mobility limitations due to bulky hardware and wiring. Wireless iBMIs offer a solution but are constrained by a limited data rate. To overcome this challenge, we are investigating hybrid spiking neural networks for embedded neural decoding in wireless iBMIs. The networks consist of a temporal convolution-based compression followed by recurrent processing and a final interpolation back to the original sequence length. As recurrent units, we explore gated recurrent units (GRUs), leaky integrate-and-fire (LIF) neurons, and a combination of both - spiking GRUs (sGRUs) and analyze their differences in terms of accuracy, footprint, and activation sparsity. To…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · EEG and Brain-Computer Interfaces · Neuroscience and Neural Engineering
