Video action recognition is a challenging but important task to understand and find out what the video does. However, acquiring labels of video is costly, and semi-supervised learning (SSL) has been studied to improve the performance even with the small number of labeled data in the task. Prior studies for semi-supervised video action recognition have mostly focused on using single modality - visuals - but video is multi-modal so utilizing both visuals and audio would be desirable and improve the performance further, which has not been well explored. Therefore, we propose audio-visual SSL for video action recognition, which uses both visual and audio together, even with quite a few labeled data that is challenging. In addition, to maximize the information of audio and video, we propose a novel audio source localization-guided mixup method that considers inter-modal relations between video and audio modalities. In experiments on UCF-51, Kinetics-400, and VGGSound datasets, our model shows the superior performance of the proposed SSL audio-visual action recognition and audio source localization-guided mixup.
Publisher
Ulsan National Institute of Science and Technology