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Unsupervised Learning from Narrated Instruction Videos

About

We address the problem of automatically learning the main steps to complete a certain task, such as changing a car tire, from a set of narrated instruction videos. The contributions of this paper are three-fold. First, we develop a new unsupervised learning approach that takes advantage of the complementary nature of the input video and the associated narration. The method solves two clustering problems, one in text and one in video, applied one after each other and linked by joint constraints to obtain a single coherent sequence of steps in both modalities. Second, we collect and annotate a new challenging dataset of real-world instruction videos from the Internet. The dataset contains about 800,000 frames for five different tasks that include complex interactions between people and objects, and are captured in a variety of indoor and outdoor settings. Third, we experimentally demonstrate that the proposed method can automatically discover, in an unsupervised manner, the main steps to achieve the task and locate the steps in the input videos.

Jean-Baptiste Alayrac, Piotr Bojanowski, Nishant Agrawal, Josef Sivic, Ivan Laptev, Simon Lacoste-Julien• 2015

Related benchmarks

TaskDatasetResultRank
Action Step LocalizationCrossTask (test)
Recall13.3
32
Action Step LocalizationCrossTask
Average Recall13.3
28
Action RecognitionUCF
Top-1 Acc59.6
17
Action SegmentationYouTube Instructions (test)
F1 Score (%)24.4
17
Action RecognitionHMDB
Top-1 Accuracy23.8
17
Action SegmentationYouTube Instructions
F124.4
16
Temporal action segmentationYouTube Instructional YTI (test)
F1 Score24.4
11
Video segmentationINRIA Instructional Videos
F1 Score41.4
10
Unsupervised Activity SegmentationYouTube Instructions excluding background frames (test)
F1-Score0.244
8
Action Step LocalizationCrossTask 1.0 (test)
Kimchi Rice Score15.6
6
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