Transfer Learning with Semi-Supervised Dataset Annotation for Birdcall Classification
Abstract
We present working notes on transfer learning with semi-supervised dataset annotation for the BirdCLEF 2023 competition, focused on identifying African bird species in recorded soundscapes. Our approach utilizes existing off-the-shelf models, BirdNET and MixIT, to address representation and labeling challenges in the competition. We explore the embedding space learned by BirdNET and propose a process to derive an annotated dataset for supervised learning. Our experiments involve various models and feature engineering approaches to maximize performance on the competition leaderboard. The results demonstrate the effectiveness of our approach in classifying bird species and highlight the potential of transfer learning and semi-supervised dataset annotation in similar tasks.
Keywords
Cite
@article{arxiv.2306.16760,
title = {Transfer Learning with Semi-Supervised Dataset Annotation for Birdcall Classification},
author = {Anthony Miyaguchi and Nathan Zhong and Murilo Gustineli and Chris Hayduk},
journal= {arXiv preprint arXiv:2306.16760},
year = {2024}
}
Comments
BirdCLEF working note submission to Multimedia Retrieval in Nature (LifeCLEF) for CLEF 2023