ASSDIVOct 2, 2020

Training Strategies to Handle Missing Modalities for Audio-Visual Expression Recognition

arXiv:2010.00734v2105 citations
Originality Incremental advance
AI Analysis

This addresses a practical issue for communication services like tele-health and human-machine interaction, but it is incremental as it builds on existing transformer models.

The paper tackles the problem of audio-visual expression recognition systems failing in real-world scenarios where modalities are missing, by proposing training strategies that randomly ablate visual inputs, resulting in gains up to 17% for frame-level ablations.

Automatic audio-visual expression recognition can play an important role in communication services such as tele-health, VOIP calls and human-machine interaction. Accuracy of audio-visual expression recognition could benefit from the interplay between the two modalities. However, most audio-visual expression recognition systems, trained in ideal conditions, fail to generalize in real world scenarios where either the audio or visual modality could be missing due to a number of reasons such as limited bandwidth, interactors' orientation, caller initiated muting. This paper studies the performance of a state-of-the art transformer when one of the modalities is missing. We conduct ablation studies to evaluate the model in the absence of either modality. Further, we propose a strategy to randomly ablate visual inputs during training at the clip or frame level to mimic real world scenarios. Results conducted on in-the-wild data, indicate significant generalization in proposed models trained on missing cues, with gains up to 17% for frame level ablations, showing that these training strategies cope better with the loss of input modalities.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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