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Imbalance-Robust and Sampling-Efficient Continuous Conditional GANs via Adaptive Vicinity and Auxiliary Regularization

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Recent advances in conditional generative modeling have introduced Continuous conditional Generative Adversarial Network (CcGAN) and Continuous Conditional Diffusion Model (CCDM) for estimating high-dimensional data distributions conditioned on scalar, continuous regression labels (e.g., angles, ages, or temperatures). However, these approaches face fundamental limitations: CcGAN suffers from data imbalance due to fixed-size vicinity constraints, while CCDM requires computationally expensive iterative sampling. To address these issues, we propose CcGAN-AVAR, an enhanced CcGAN framework featuring (1) two novel components for handling data imbalance - an adaptive vicinity mechanism that dynamically adjusts vicinity size and a multi-task discriminator that enhances generator training through auxiliary regression and density ratio estimation - and (2) the GAN framework's native one-step generator, enable 30x-2000x faster inference than CCDM. Extensive experiments on four benchmark datasets (64x64 to 256x256 resolution) across eleven challenging settings demonstrate that CcGAN-AVAR achieves state-of-the-art generation quality while maintaining sampling efficiency.

Xin Ding, Yun Chen, Yongwei Wang, Kao Zhang, Sen Zhang, Peibei Cao, Xiangxue Wang• 2025

Related benchmarks

TaskDatasetResultRank
Conditional Image GenerationUTKFace 64x64 (test)
SFID0.356
10
Conditional Image GenerationSteering Angle 128x128 (test)
SFID0.888
10
Conditional Image GenerationSteering Angle 64x64 (test)
SFID0.809
10
Conditional Image GenerationUTKFace 128x128 (test)
SFID0.297
10
Conditional Image GenerationRC-49 64x64 (test)
SFID0.042
10
Conditional Image GenerationCell-200 64x64 (test)
SFID7.665
6
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