Locality-aware Cross-modal Correspondence Learning for Dense Audio-Visual Events Localization
- URL: http://arxiv.org/abs/2409.07967v1
- Date: Thu, 12 Sep 2024 11:54:25 GMT
- Title: Locality-aware Cross-modal Correspondence Learning for Dense Audio-Visual Events Localization
- Authors: Ling Xing, Hongyu Qu, Rui Yan, Xiangbo Shu, Jinhui Tang,
- Abstract summary: Dense-localization Audio-Visual Events (DAVE) aims to identify time boundaries and corresponding categories for events that can be heard and seen concurrently in an untrimmed video.
Existing methods typically encode audio and visual representation separately without any explicit cross-modal alignment constraint.
We present LOCO, a Locality-aware cross-modal Correspondence learning framework for DAVE.
- Score: 50.122441710500055
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Dense-localization Audio-Visual Events (DAVE) aims to identify time boundaries and corresponding categories for events that can be heard and seen concurrently in an untrimmed video. Existing methods typically encode audio and visual representation separately without any explicit cross-modal alignment constraint. Then they adopt dense cross-modal attention to integrate multimodal information for DAVE. Thus these methods inevitably aggregate irrelevant noise and events, especially in complex and long videos, leading to imprecise detection. In this paper, we present LOCO, a Locality-aware cross-modal Correspondence learning framework for DAVE. The core idea is to explore local temporal continuity nature of audio-visual events, which serves as informative yet free supervision signals to guide the filtering of irrelevant information and inspire the extraction of complementary multimodal information during both unimodal and cross-modal learning stages. i) Specifically, LOCO applies Locality-aware Correspondence Correction (LCC) to uni-modal features via leveraging cross-modal local-correlated properties without any extra annotations. This enforces uni-modal encoders to highlight similar semantics shared by audio and visual features. ii) To better aggregate such audio and visual features, we further customize Cross-modal Dynamic Perception layer (CDP) in cross-modal feature pyramid to understand local temporal patterns of audio-visual events by imposing local consistency within multimodal features in a data-driven manner. By incorporating LCC and CDP, LOCO provides solid performance gains and outperforms existing methods for DAVE. The source code will be released.
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