PooDLe: Pooled and dense self-supervised learning from naturalistic videos
Self-supervised learning has driven significant progress in learning from single-subject, iconic images. However, there are still unanswered questions about the use of minimally-curated, naturalistic video data, which contain dense scenes with many independent objects, imbalanced class distributions...
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Zusammenfassung: | Self-supervised learning has driven significant progress in learning from
single-subject, iconic images. However, there are still unanswered questions
about the use of minimally-curated, naturalistic video data, which contain
dense scenes with many independent objects, imbalanced class distributions, and
varying object sizes. In this paper, we propose a novel approach that combines
an invariance-based SSL objective on pooled representations with a dense SSL
objective that enforces equivariance to optical flow warping. Our findings
indicate that a unified objective applied at multiple feature scales is
essential for learning effective image representations from high-resolution,
naturalistic videos. We validate our approach on the BDD100K driving video
dataset and the Walking Tours first-person video dataset, demonstrating its
ability to capture spatial understanding from a dense objective and semantic
understanding via a pooled representation objective. |
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DOI: | 10.48550/arxiv.2408.11208 |