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Main Authors: Chen, Chenggang, Yang, Zhiyu
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.10230
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author Chen, Chenggang
Yang, Zhiyu
author_facet Chen, Chenggang
Yang, Zhiyu
contents Bioacoustics, the study of animal sounds, offers a non-invasive method to monitor ecosystems. Extracting embeddings from audio-pretrained deep learning (DL) models without fine-tuning has become popular for obtaining bioacoustic features for tasks. However, a recent benchmark study reveals that while fine-tuned audio-pretrained VGG and transformer models achieve state-of-the-art performance in some tasks, they fail in others. This study benchmarks 11 DL models on the same tasks by reducing their learned embeddings' dimensionality and evaluating them through clustering. We found that audio-pretrained DL models 1) without fine-tuning even underperform fine-tuned AlexNet, 2) both with and without fine-tuning fail to separate the background from labeled sounds, but ResNet does, and 3) outperform other models when fewer background sounds are included during fine-tuning. This study underscores the necessity of fine-tuning audio-pretrained models and checking the embeddings after fine-tuning. Our codes are available: https://github.com/NeuroscienceAI/Audio\_Embeddings
format Preprint
id arxiv_https___arxiv_org_abs_2508_10230
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle No Free Lunch from Audio Pretraining in Bioacoustics: A Benchmark Study of Embeddings
Chen, Chenggang
Yang, Zhiyu
Sound
Artificial Intelligence
Bioacoustics, the study of animal sounds, offers a non-invasive method to monitor ecosystems. Extracting embeddings from audio-pretrained deep learning (DL) models without fine-tuning has become popular for obtaining bioacoustic features for tasks. However, a recent benchmark study reveals that while fine-tuned audio-pretrained VGG and transformer models achieve state-of-the-art performance in some tasks, they fail in others. This study benchmarks 11 DL models on the same tasks by reducing their learned embeddings' dimensionality and evaluating them through clustering. We found that audio-pretrained DL models 1) without fine-tuning even underperform fine-tuned AlexNet, 2) both with and without fine-tuning fail to separate the background from labeled sounds, but ResNet does, and 3) outperform other models when fewer background sounds are included during fine-tuning. This study underscores the necessity of fine-tuning audio-pretrained models and checking the embeddings after fine-tuning. Our codes are available: https://github.com/NeuroscienceAI/Audio\_Embeddings
title No Free Lunch from Audio Pretraining in Bioacoustics: A Benchmark Study of Embeddings
topic Sound
Artificial Intelligence
url https://arxiv.org/abs/2508.10230