NCLGASFeb 2, 2025

neuro2voc: Decoding Vocalizations from Neural Activity

arXiv:2502.07800v1
Originality Incremental advance
AI Analysis

This work addresses neural decoding of complex motor outputs for neuroscience, offering incremental methodological improvements for processing sparse neural data.

The paper tackled decoding zebra finch vocalizations from neural activity, achieving syllable classification with XGBoost and SHAP analysis, and generating spectrograms using a contrastive learning-VAE framework.

Accurate decoding of neural spike trains and relating them to motor output is a challenging task due to the inherent sparsity and length in neural spikes and the complexity of brain circuits. This master project investigates experimental methods for decoding zebra finch motor outputs (in both discrete syllables and continuous spectrograms), from invasive neural recordings obtained from Neuropixels. There are three major achievements: (1) XGBoost with SHAP analysis trained on spike rates revealed neuronal interaction patterns crucial for syllable classification. (2) Novel method (tokenizing neural data with GPT2) and architecture (Mamba2) demonstrated potential for decoding of syllables using spikes. (3) A combined contrastive learning-VAE framework successfully generated spectrograms from binned neural data. This work establishes a promising foundation for neural decoding of complex motor outputs and offers several novel methodological approaches for processing sparse neural data.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes