Advancing Multi-grained Alignment for Contrastive Language-Audio Pre-training
Abstract
Recent advances have been witnessed in audio-language joint learning, such as CLAP, that shows much success in multi-modal understanding tasks. These models usually aggregate uni-modal local representations, namely frame or word features, into global ones, on which the contrastive loss is employed to reach coarse-grained cross-modal alignment. However, frame-level correspondence with texts may be ignored, making it ill-posed on explainability and fine-grained challenges which may also undermine performances on coarse-grained tasks. In this work, we aim to improve both coarse- and fine-grained audio-language alignment in large-scale contrastive pre-training. To unify the granularity and latent distribution of two modalities, a shared codebook is adopted to represent multi-modal global features with common bases, and each codeword is regularized to encode modality-shared semantics, bridging the gap between frame and word features. Based on it, a locality-aware block is involved to purify local patterns, and a hard-negative guided loss is devised to boost alignment. Experiments on eleven zero-shot coarse- and fine-grained tasks suggest that our model not only surpasses the baseline CLAP significantly but also yields superior or competitive results compared to current SOTA works.
Keywords
Cite
@article{arxiv.2408.07919,
title = {Advancing Multi-grained Alignment for Contrastive Language-Audio Pre-training},
author = {Yiming Li and Zhifang Guo and Xiangdong Wang and Hong Liu},
journal= {arXiv preprint arXiv:2408.07919},
year = {2024}
}
Comments
ACM MM 2024 (Oral)