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Yuan Gong; Andrew Rouditchenko; Alexander H. Liu; David Harwath; Leonid Karlinsky; Hilde Kuehne; James Glass

Abstract
In this paper, we first extend the recent Masked Auto-Encoder (MAE) model from a single modality to audio-visual multi-modalities. Subsequently, we propose the Contrastive Audio-Visual Masked Auto-Encoder (CAV-MAE) by combining contrastive learning and masked data modeling, two major self-supervised learning frameworks, to learn a joint and coordinated audio-visual representation. Our experiments show that the contrastive audio-visual correspondence learning objective not only enables the model to perform audio-visual retrieval tasks, but also helps the model learn a better joint representation. As a result, our fully self-supervised pretrained CAV-MAE achieves a new SOTA accuracy of 65.9% on VGGSound, and is comparable with the previous best supervised pretrained model on AudioSet in the audio-visual event classification task. Code and pretrained models are at https://github.com/yuangongnd/cav-mae.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| audio-classification-on-audioset | CAV-MAE (Audio-Visual) | Test mAP: 0.512 |
| audio-classification-on-audioset | CAV-MAE (Audio-Only) | Test mAP: 0.466 |
| audio-classification-on-audioset | CAV-MAE (Visual-Only) | Test mAP: 0.262 |
| audio-classification-on-vggsound | CAV-MAE (Audio-Visual) | Top 1 Accuracy: 65.9 |
| audio-classification-on-vggsound | CAV-MAE (Audio-Only) | Top 1 Accuracy: 59.5 |
| audio-tagging-on-audioset | CAV-MAE (Audio-Visual) | mean average precision: 0.512 |
| audio-tagging-on-audioset | CAV-MAE (Audio-Only) | mean average precision: 0.466 |
| multi-modal-classification-on-audioset | CAV-MAE | Average mAP: 0.512 |
| multi-modal-classification-on-vgg-sound | CAV-MAE (Audio-Visual) | Top-1 Accuracy: 65.9 |
| sound-prompted-semantic-segmentation-on | CAVMAE | mAP: 26.0 mIoU: 17.0 |
| speech-prompted-semantic-segmentation-on | CAVMAE | mAP: 27.2 mIoU: 19.9 |
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