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arxiv: 2011.09158 · v2 · pith:DAWY3FJT · submitted 2020-11-18 · cs.CV

Privileged Knowledge Distillation for Online Action Detection

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classification cs.CV
keywords onlineprivilegedactiondetectiondistillationframesinformationknowledge
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Online Action Detection (OAD) in videos is proposed as a per-frame labeling task to address the real-time prediction tasks that can only obtain the previous and current video frames. This paper presents a novel learning-with-privileged based framework for online action detection where the future frames only observable at the training stages are considered as a form of privileged information. Knowledge distillation is employed to transfer the privileged information from the offline teacher to the online student. We note that this setting is different from conventional KD because the difference between the teacher and student models mostly lies in input data rather than the network architecture. We propose Privileged Knowledge Distillation (PKD) which (i) schedules a curriculum learning procedure and (ii) inserts auxiliary nodes to the student model, both for shrinking the information gap and improving learning performance. Compared to other OAD methods that explicitly predict future frames, our approach avoids learning unpredictable unnecessary yet inconsistent visual contents and achieves state-of-the-art accuracy on two popular OAD benchmarks, TVSeries and THUMOS14.

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Cited by 1 Pith paper

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. How Much Future Helps? A Controlled Study of Future-Privileged Supervision for Causal Egocentric Gaze Estimation

    cs.CV 2026-07 unverdicted novelty 5.0

    Future-privileged supervision during training improves causal egocentric gaze estimation, with optimal gains at 1.7-3.3 seconds look-ahead on EGTEA Gaze+ and 2.7 seconds on Ego4D.