Benchmarking Neural Decoders

Benchmarking of Hardware-efficient Real-time Neural Decoding in Brain-computer Interfaces

Master Thesis (2024)
Author(s)

P.L. Hueber (TU Delft - Electrical Engineering, Mathematics and Computer Science)

Contributor(s)

Nergis Tömen – Mentor (TU Delft - Pattern Recognition and Bioinformatics)

A. Micheli – Coach (TU Delft - Pattern Recognition and Bioinformatics)

J.C. van Gemert – Graduation committee member (TU Delft - Pattern Recognition and Bioinformatics)

R. Guerra Marroquim – Graduation committee member (TU Delft - Computer Graphics and Visualisation)

Faculty
Electrical Engineering, Mathematics and Computer Science
Copyright
© 2024 Paul Hueber
More Info
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Publication Year
2024
Language
English
Copyright
© 2024 Paul Hueber
Graduation Date
29-01-2024
Awarding Institution
Delft University of Technology
Programme
['Electrical Engineering']
Sponsors
Imec
Faculty
Electrical Engineering, Mathematics and Computer Science
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Abstract

Designing processors for implantable closed-loop neuromodulation systems presents a formidable challenge owing to the constrained operational environment, which requires low latency and high energy efficacy. Previous benchmarks have provided limited insights into power consumption and latency. However, this study introduces algorithmic metrics that capture the potential and limitations of neural decoders for closed-loop intra-cortical brain-computer interfaces in the context of energy and hardware constraints. This study benchmarks common decoding methods for predicting a primate’s finger kinematics from the motor cortex and explores their suitability for low latency and high energy efficient neural decoding. The study found that ANN-based decoders provide superior decoding accuracy, requiring high latency and many operations to effectively decode neural signals. Spiking neural networks have emerged as a solution, bridging this gap by achieving competitive decoding performance within sub-10ms while utilizing a fraction of computational resources. These distinctive advantages of neuromorphic spiking neural networks make them highly suitable for the challenging closed-loop neural modulation environment. Their capacity to balance decoding accuracy and operational efficiency offers immense potential in reshaping the landscape of neural decoders, fostering greater understanding, and opening new frontiers in closed-loop intra-cortical human-machine interaction.

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File under embargo until 07-12-2025