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AViD Dataset: Anonymized Videos from Diverse Countries

2020-07-10NeurIPS 2020Code Available1· sign in to hype

AJ Piergiovanni, Michael S. Ryoo

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Abstract

We introduce a new public video dataset for action recognition: Anonymized Videos from Diverse countries (AViD). Unlike existing public video datasets, AViD is a collection of action videos from many different countries. The motivation is to create a public dataset that would benefit training and pretraining of action recognition models for everybody, rather than making it useful for limited countries. Further, all the face identities in the AViD videos are properly anonymized to protect their privacy. It also is a static dataset where each video is licensed with the creative commons license. We confirm that most of the existing video datasets are statistically biased to only capture action videos from a limited number of countries. We experimentally illustrate that models trained with such biased datasets do not transfer perfectly to action videos from the other countries, and show that AViD addresses such problem. We also confirm that the new AViD dataset could serve as a good dataset for pretraining the models, performing comparably or better than prior datasets.

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Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
Charades3D ResNet-50 + super-events pretrained on AViDmAP25.2Unverified
Charades3D ResNet-50 pretrained on AViDmAP23.2Unverified

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