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arxiv: 2312.14556 · v4 · pith:CLIS63Q7 · submitted 2023-12-22 · cs.CV

CaptainCook4D: A Dataset for Understanding Errors in Procedural Activities

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classification cs.CV
keywords activitiesdataseterrorsproceduralactivityannotationscaptaincook4dfollowing
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Following step-by-step procedures is an essential component of various activities carried out by individuals in their daily lives. These procedures serve as a guiding framework that helps to achieve goals efficiently, whether it is assembling furniture or preparing a recipe. However, the complexity and duration of procedural activities inherently increase the likelihood of making errors. Understanding such procedural activities from a sequence of frames is a challenging task that demands an accurate interpretation of visual information and the ability to reason about the structure of the activity. To this end, we collect a new egocentric 4D dataset, CaptainCook4D, comprising 384 recordings (94.5 hours) of people performing recipes in real kitchen environments. This dataset consists of two distinct types of activity: one in which participants adhere to the provided recipe instructions and another in which they deviate and induce errors. We provide 5.3K step annotations and 10K fine-grained action annotations and benchmark the dataset for the following tasks: supervised error recognition, multistep localization, and procedure learning

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Cited by 2 Pith papers

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  2. ESTANet: Efficient Online Error Detection in Procedural Videos via Prediction Inconsistency

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    ESTANet is a lightweight framework that detects online errors in procedural videos by aggregating prediction inconsistencies among standard and error-sensitive action detectors.