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Cross-task weakly supervised learning from instructional videos

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In this paper we investigate learning visual models for the steps of ordinary tasks using weak supervision via instructional narrations and an ordered list of steps instead of strong supervision via temporal annotations. At the heart of our approach is the observation that weakly supervised learning may be easier if a model shares components while learning different steps: `pour egg' should be trained jointly with other tasks involving `pour' and `egg'. We formalize this in a component model for recognizing steps and a weakly supervised learning framework that can learn this model under temporal constraints from narration and the list of steps. Past data does not permit systematic studying of sharing and so we also gather a new dataset, CrossTask, aimed at assessing cross-task sharing. Our experiments demonstrate that sharing across tasks improves performance, especially when done at the component level and that our component model can parse previously unseen tasks by virtue of its compositionality.

Dimitri Zhukov, Jean-Baptiste Alayrac, Ramazan Gokberk Cinbis, David Fouhey, Ivan Laptev, Josef Sivic• 2019

Related benchmarks

TaskDatasetResultRank
Action Step LocalizationCrossTask (test)
Recall31.6
32
Action Step LocalizationCrossTask
Average Recall31.6
28
Temporal Action LocalizationCrossTask (test)
Recall0.316
9
Temporal Action LocalizationCrossTask
Recall31.6
9
Cross-task learningCrossTask Primary Tasks (test)
Recall22.4
6
Action Step LocalizationCrossTask 1.0 (test)
Kimchi Rice Score13.3
6
Step localizationCrossTask 1.0 (test)
Average Localization Time22.4
4
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