Authors
Satoshi Tsutsui, Xizi Wang, Guangyuan Weng, Yayun Zhang, David J Crandall, Chen Yu
Publication date
2022/9/12
Conference
2022 IEEE International Conference on Development and Learning (ICDL)
Pages
355-361
Publisher
IEEE
Description
Machine learning models of visual action recognition are typically trained and tested on data from specific situations where actions are associated with certain objects. It is an open question how action-object associations in the training set influence a model’s ability to generalize beyond trained situations. We set out to identify properties of training data that lead to action recognition models with greater generalization ability. To do this, we take inspiration from a cognitive mechanism called cross-situational learning, which states that human learners extract the meaning of concepts by observing instances of the same concept across different situations. We perform controlled experiments with various types of action-object associations, and identify key properties of action-object co-occurrence in training data that lead to better classifiers. Given that these properties are missing in the datasets that are typically used to …
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Scholar articles
S Tsutsui, X Wang, G Weng, Y Zhang, DJ Crandall… - 2022 IEEE International Conference on Development …, 2022