Learning Object Permanence from Video

@inproceedings{Shamsian2020LearningOP,
  title={Learning Object Permanence from Video},
  author={Aviv Shamsian and Ofri Kleinfeld and A. Globerson and Gal Chechik},
  booktitle={ECCV},
  year={2020}
}
  • Aviv Shamsian, Ofri Kleinfeld, +1 author Gal Chechik
  • Published in ECCV 2020
  • Computer Science
  • Object Permanence allows people to reason about the location of non-visible objects, by understanding that they continue to exist even when not perceived directly. Object Permanence is critical for building a model of the world, since objects in natural visual scenes dynamically occlude and contain each-other. Intensive studies in developmental psychology suggest that object permanence is a challenging task that is learned through extensive experience. Here we introduce the setup of learning… CONTINUE READING

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