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HVM-1: Large-scale video models pretrained with nearly 5000 hours of human-like video data

Large-scale video models pretrained with extensive human-like video data using spatiotemporal masked autoencoders outperform models trained on shorter action-oriented clips and exhibit better object representations.

Year
2024
Venue
arXiv 2024
Authors
1
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arxiv.org/abs/2407.18067ARXIV-DEFAULT
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Abstract

We introduce Human-like Video Models (HVM-1), large-scale video models pretrained with nearly 5000 hours of curated human-like video data (mostly egocentric, temporally extended, continuous video recordings), using the spatiotemporal masked autoencoder (ST-MAE) algorithm. We release two 633M parameter models trained at spatial resolutions of 224x224 and 448x448 pixels. We evaluate the performance of these models in downstream few-shot video and image recognition tasks and compare them against a model pretrained with 1330 hours of short action-oriented video clips from YouTube (Kinetics-700). HVM-1 models perform competitively against the Kinetics-700 pretrained model in downstream evaluations despite substantial qualitative differences between the spatiotemporal characteristics of the corresponding pretraining datasets. HVM-1 models also learn more accurate and more robust object representations compared to models pretrained with the image-based MAE algorithm on the same data, demonstrating the potential benefits of learning to predict temporal regularities in natural videos for learning better object representations.

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1