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RefineLoc: Iterative Refinement for Weakly-Supervised Action Localization

About

Video action detectors are usually trained using datasets with fully-supervised temporal annotations. Building such datasets is an expensive task. To alleviate this problem, recent methods have tried to leverage weak labeling, where videos are untrimmed and only a video-level label is available. In this paper, we propose RefineLoc, a novel weakly-supervised temporal action localization method. RefineLoc uses an iterative refinement approach by estimating and training on snippet-level pseudo ground truth at every iteration. We show the benefit of this iterative approach and present an extensive analysis of five different pseudo ground truth generators. We show the effectiveness of our model on two standard action datasets, ActivityNet v1.2 and THUMOS14. RefineLoc shows competitive results with the state-of-the-art in weakly-supervised temporal localization. Additionally, our iterative refinement process is able to significantly improve the performance of two state-of-the-art methods, setting a new state-of-the-art on THUMOS14.

Alejandro Pardo, Humam Alwassel, Fabian Caba Heilbron, Ali Thabet, Bernard Ghanem• 2019

Related benchmarks

TaskDatasetResultRank
Temporal Action LocalizationTHUMOS14 (test)
AP @ IoU=0.523.1
319
Temporal Action LocalizationTHUMOS-14 (test)
mAP@0.340.8
308
Temporal Action LocalizationActivityNet 1.2 (val)
mAP@IoU 0.538.7
110
Temporal Action LocalizationTHUMOS 2014
mAP@0.3033.9
93
Temporal Action LocalizationActivityNet 1.2
mAP@0.538
32
Temporal Action DetectionFineAction
Avg mAP3.02
27
Temporal Action DetectionFineGym (new data split)
mAP@0.16.67
10
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