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DIP: Unsupervised Dense In-Context Post-training of Visual Representations

DIP: Unsupervised Dense In-Context Post-training of Visual Representations

来源:Arxiv_logoArxiv
英文摘要

We introduce DIP, a novel unsupervised post-training method designed to enhance dense image representations in large-scale pretrained vision encoders for in-context scene understanding. Unlike prior approaches that rely on complex self-distillation architectures, our method trains the vision encoder using pseudo-tasks that explicitly simulate downstream in-context scenarios, inspired by meta-learning principles. To enable post-training on unlabeled data, we propose an automatic mechanism for generating in-context tasks that combines a pretrained diffusion model and the vision encoder itself. DIP is simple, unsupervised, and computationally efficient, requiring less than 9 hours on a single A100 GPU. By learning dense representations through pseudo in-context tasks, it achieves strong performance across a wide variety of downstream real-world in-context scene understanding tasks. It outperforms both the initial vision encoder and prior methods, offering a practical and effective solution for improving dense representations. Code available here: https://github.com/sirkosophia/DIP

Sophia Sirko-Galouchenko、Spyros Gidaris、Antonin Vobecky、Andrei Bursuc、Nicolas Thome

计算技术、计算机技术

Sophia Sirko-Galouchenko,Spyros Gidaris,Antonin Vobecky,Andrei Bursuc,Nicolas Thome.DIP: Unsupervised Dense In-Context Post-training of Visual Representations[EB/OL].(2025-06-23)[2025-08-02].https://arxiv.org/abs/2506.18463.点此复制

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