CVMay 12, 2022

Weakly-Supervised Action Detection Guided by Audio Narration

arXiv:2205.05895v11 citationsh-index: 18
Originality Incremental advance
AI Analysis

This work addresses the annotation expense problem for video action detection researchers, offering an incremental improvement by utilizing existing narration data.

The paper tackles the problem of expensive action boundary annotations in video detection by proposing a model that learns from noisy audio narration and multimodal features, achieving good action detection performance and reducing annotation costs.

Videos are more well-organized curated data sources for visual concept learning than images. Unlike the 2-dimensional images which only involve the spatial information, the additional temporal dimension bridges and synchronizes multiple modalities. However, in most video detection benchmarks, these additional modalities are not fully utilized. For example, EPIC Kitchens is the largest dataset in first-person (egocentric) vision, yet it still relies on crowdsourced information to refine the action boundaries to provide instance-level action annotations. We explored how to eliminate the expensive annotations in video detection data which provide refined boundaries. We propose a model to learn from the narration supervision and utilize multimodal features, including RGB, motion flow, and ambient sound. Our model learns to attend to the frames related to the narration label while suppressing the irrelevant frames from being used. Our experiments show that noisy audio narration suffices to learn a good action detection model, thus reducing annotation expenses.

Foundations

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

Your Notes