SIGMA proposes a lightweight PEFT adapter consisting of scale-adaptive fusion and semantic modulation to bridge structural and distributional gaps when adapting vision foundation models to dense tasks.
On Self Modulation for Generative Adversarial Networks
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abstract
Training Generative Adversarial Networks (GANs) is notoriously challenging. We propose and study an architectural modification, self-modulation, which improves GAN performance across different data sets, architectures, losses, regularizers, and hyperparameter settings. Intuitively, self-modulation allows the intermediate feature maps of a generator to change as a function of the input noise vector. While reminiscent of other conditioning techniques, it requires no labeled data. In a large-scale empirical study we observe a relative decrease of $5\%-35\%$ in FID. Furthermore, all else being equal, adding this modification to the generator leads to improved performance in $124/144$ ($86\%$) of the studied settings. Self-modulation is a simple architectural change that requires no additional parameter tuning, which suggests that it can be applied readily to any GAN.
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cs.CV 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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SIGMA: Bridging Structural and Distributional Gaps for Vision Foundation Model Adaptation
SIGMA proposes a lightweight PEFT adapter consisting of scale-adaptive fusion and semantic modulation to bridge structural and distributional gaps when adapting vision foundation models to dense tasks.