Self-Supervised Weight Templates for Scalable Vision Model Initialization
- URL: http://arxiv.org/abs/2601.19694v1
- Date: Tue, 27 Jan 2026 15:15:17 GMT
- Title: Self-Supervised Weight Templates for Scalable Vision Model Initialization
- Authors: Yucheng Xie, Fu Feng, Ruixiao Shi, Jing Wang, Yong Rui, Xin Geng,
- Abstract summary: SWEET is a self-supervised framework that performs constraint-based pre-training to enable scalable initialization in vision tasks.<n>We introduce width-wise scaling, which regularizes the template along width-related dimensions and encourages robust, width-inwidth representations.<n>Experiments on textscclassification, textscsegmentation and textscgeneration tasks demonstrate the state-of-the-art performance of SWEET.
- Score: 34.75805112986586
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The increasing scale and complexity of modern model parameters underscore the importance of pre-trained models. However, deployment often demands architectures of varying sizes, exposing limitations of conventional pre-training and fine-tuning. To address this, we propose SWEET, a self-supervised framework that performs constraint-based pre-training to enable scalable initialization in vision tasks. Instead of pre-training a fixed-size model, we learn a shared weight template and size-specific weight scalers under Tucker-based factorization, which promotes modularity and supports flexible adaptation to architectures with varying depths and widths. Target models are subsequently initialized by composing and reweighting the template through lightweight weight scalers, whose parameters can be efficiently learned from minimal training data. To further enhance flexibility in width expansion, we introduce width-wise stochastic scaling, which regularizes the template along width-related dimensions and encourages robust, width-invariant representations for improved cross-width generalization. Extensive experiments on \textsc{classification}, \textsc{detection}, \textsc{segmentation} and \textsc{generation} tasks demonstrate the state-of-the-art performance of SWEET for initializing variable-sized vision models.
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