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Auteurs principaux: Wang, Chenting, Zhu, Yuhan, Xu, Yicheng, Yang, Jiange, Lin, Lang, Yan, Ziang, Wang, Yali, Wang, Yi, Wang, Limin
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2512.01342
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author Wang, Chenting
Zhu, Yuhan
Xu, Yicheng
Yang, Jiange
Lin, Lang
Yan, Ziang
Wang, Yali
Wang, Yi
Wang, Limin
author_facet Wang, Chenting
Zhu, Yuhan
Xu, Yicheng
Yang, Jiange
Lin, Lang
Yan, Ziang
Wang, Yali
Wang, Yi
Wang, Limin
contents Large-scale video-text pretraining achieves strong performance but depends on noisy, synthetic captions with limited semantic coverage, often overlooking implicit world knowledge such as object motion, 3D geometry, and physical cues. In contrast, masked video modeling (MVM) directly exploits spatiotemporal structures but trails text-supervised methods on general tasks. We find this gap arises from overlooked architectural issues: pixel-level reconstruction struggles with convergence and its low-level requirement often conflicts with semantics, while latent prediction often encourages shortcut learning. To address these, we disentangle the traditional encoder-decoder design into an Encoder-Predictor-Decoder (EPD) framework, where the predictor acts as a latent world model, and propose InternVideo-Next, a two-stage pretraining scheme that builds a semantically consistent yet detail-preserving latent space for this world model. First, conventional linear decoder in pixel MVM enforces the predictor output latent to be linearly projected to, thus separable in pixel space, causing the conflict with semantic abstraction. Our Stage 1 proposes a conditional diffusion decoder and injects reliable image-level semantic priors to enhance semantics and convergence, thus bridging pixel-level fidelity with high-level semantic abstraction. Stage 2 further learns world knowledge by predicting frozen Stage 1 targets within this space, mitigating shortcut learning. Trained on public, unlabeled videos, InternVideo-Next achieves state-of-the-art results across benchmarks and provides a scalable path toward general video representation learning.
format Preprint
id arxiv_https___arxiv_org_abs_2512_01342
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle InternVideo-Next: Towards General Video Foundation Models without Video-Text Supervision
Wang, Chenting
Zhu, Yuhan
Xu, Yicheng
Yang, Jiange
Lin, Lang
Yan, Ziang
Wang, Yali
Wang, Yi
Wang, Limin
Computer Vision and Pattern Recognition
Large-scale video-text pretraining achieves strong performance but depends on noisy, synthetic captions with limited semantic coverage, often overlooking implicit world knowledge such as object motion, 3D geometry, and physical cues. In contrast, masked video modeling (MVM) directly exploits spatiotemporal structures but trails text-supervised methods on general tasks. We find this gap arises from overlooked architectural issues: pixel-level reconstruction struggles with convergence and its low-level requirement often conflicts with semantics, while latent prediction often encourages shortcut learning. To address these, we disentangle the traditional encoder-decoder design into an Encoder-Predictor-Decoder (EPD) framework, where the predictor acts as a latent world model, and propose InternVideo-Next, a two-stage pretraining scheme that builds a semantically consistent yet detail-preserving latent space for this world model. First, conventional linear decoder in pixel MVM enforces the predictor output latent to be linearly projected to, thus separable in pixel space, causing the conflict with semantic abstraction. Our Stage 1 proposes a conditional diffusion decoder and injects reliable image-level semantic priors to enhance semantics and convergence, thus bridging pixel-level fidelity with high-level semantic abstraction. Stage 2 further learns world knowledge by predicting frozen Stage 1 targets within this space, mitigating shortcut learning. Trained on public, unlabeled videos, InternVideo-Next achieves state-of-the-art results across benchmarks and provides a scalable path toward general video representation learning.
title InternVideo-Next: Towards General Video Foundation Models without Video-Text Supervision
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.01342