Dual Normalization Multitasking for Audio-Visual Sounding Object Localization
This work addresses a foundational gap in audio-visual research by enabling quantitative evaluation for sound source localization, which is incremental as it builds on existing datasets but introduces new concepts and metrics.
The paper tackles the lack of datasets and metrics for audio-visual sound source localization by introducing the concept of Sounding Object to reduce ambiguity, and proposes a new dataset (AVSOL-E) and metrics for evaluation. It presents a Dual Normalization Multitasking (DNM) method that significantly outperforms baseline methods, though no specific numbers are provided in the abstract.
Although several research works have been reported on audio-visual sound source localization in unconstrained videos, no datasets and metrics have been proposed in the literature to quantitatively evaluate its performance. Defining the ground truth for sound source localization is difficult, because the location where the sound is produced is not limited to the range of the source object, but the vibrations propagate and spread through the surrounding objects. Therefore we propose a new concept, Sounding Object, to reduce the ambiguity of the visual location of sound, making it possible to annotate the location of the wide range of sound sources. With newly proposed metrics for quantitative evaluation, we formulate the problem of Audio-Visual Sounding Object Localization (AVSOL). We also created the evaluation dataset (AVSOL-E dataset) by manually annotating the test set of well-known Audio-Visual Event (AVE) dataset. To tackle this new AVSOL problem, we propose a novel multitask training strategy and architecture called Dual Normalization Multitasking (DNM), which aggregates the Audio-Visual Correspondence (AVC) task and the classification task for video events into a single audio-visual similarity map. By efficiently utilize both supervisions by DNM, our proposed architecture significantly outperforms the baseline methods.