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Autori principali: Lin, Yu-Xiang, Yang, Chih-Kai, Chen, Wei-Chih, Li, Chen-An, Huang, Chien-yu, Chen, Xuanjun, Lee, Hung-yi
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2502.09940
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author Lin, Yu-Xiang
Yang, Chih-Kai
Chen, Wei-Chih
Li, Chen-An
Huang, Chien-yu
Chen, Xuanjun
Lee, Hung-yi
author_facet Lin, Yu-Xiang
Yang, Chih-Kai
Chen, Wei-Chih
Li, Chen-An
Huang, Chien-yu
Chen, Xuanjun
Lee, Hung-yi
contents With the rise of multimodal large language models, GPT-4o stands out as a pioneering model, driving us to evaluate its capabilities. This report assesses GPT-4o across various tasks to analyze its audio processing and reasoning abilities. We find that GPT-4o exhibits strong knowledge in audio, speech, and music understanding, performing well in tasks like intent classification, spoken command classification, semantic and grammatical reasoning., multilingual speech recognition, and singing analysis. It also shows greater robustness against hallucinations than other large audio-language models (LALMs). However, it struggles with tasks such as audio duration prediction and instrument classification. Additionally, GPT-4o's safety mechanisms cause it to decline tasks like speaker identification, age classification, MOS prediction, and audio deepfake detection. Notably, the model exhibits a significantly different refusal rate when responding to speaker verification tasks on different datasets. This is likely due to variations in the accompanying instructions or the quality of the input audio, suggesting the sensitivity of its built-in safeguards. Finally, we acknowledge that model performance varies with evaluation protocols. This report only serves as a preliminary exploration of the current state of LALMs.
format Preprint
id arxiv_https___arxiv_org_abs_2502_09940
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Preliminary Exploration with GPT-4o Voice Mode
Lin, Yu-Xiang
Yang, Chih-Kai
Chen, Wei-Chih
Li, Chen-An
Huang, Chien-yu
Chen, Xuanjun
Lee, Hung-yi
Computation and Language
Sound
Audio and Speech Processing
With the rise of multimodal large language models, GPT-4o stands out as a pioneering model, driving us to evaluate its capabilities. This report assesses GPT-4o across various tasks to analyze its audio processing and reasoning abilities. We find that GPT-4o exhibits strong knowledge in audio, speech, and music understanding, performing well in tasks like intent classification, spoken command classification, semantic and grammatical reasoning., multilingual speech recognition, and singing analysis. It also shows greater robustness against hallucinations than other large audio-language models (LALMs). However, it struggles with tasks such as audio duration prediction and instrument classification. Additionally, GPT-4o's safety mechanisms cause it to decline tasks like speaker identification, age classification, MOS prediction, and audio deepfake detection. Notably, the model exhibits a significantly different refusal rate when responding to speaker verification tasks on different datasets. This is likely due to variations in the accompanying instructions or the quality of the input audio, suggesting the sensitivity of its built-in safeguards. Finally, we acknowledge that model performance varies with evaluation protocols. This report only serves as a preliminary exploration of the current state of LALMs.
title A Preliminary Exploration with GPT-4o Voice Mode
topic Computation and Language
Sound
Audio and Speech Processing
url https://arxiv.org/abs/2502.09940