类不平衡扩散模型中的噪声采样反思

Chenghao Xu;Jiexi Yan;Muli Yang;Cheng Deng
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引用次数: 0

摘要

在图像生成的实际应用中,处理长尾数据分布是基于扩散的生成模型面临的共同挑战。为了解决这个问题,我们研究了扩散模型潜空间中的头类累积效应,尤其关注其与噪声采样策略的相关性。我们的实验分析表明,对所有类别的噪声先验采用一致的采样分布会导致噪声采样分布明显偏向头部类别,从而导致生成图像的质量和多样性较差。受此启发,我们提出了一种名为 "偏差感知先验调整"(BPA)的新型采样策略,用于在类不平衡场景中消除扩散模型的偏差。利用 BPA,每个类别在训练过程中都会自动分配一个自适应噪声采样分布先验,从而有效减轻类别不平衡对生成过程的影响。在多个基准上进行的广泛实验证明,使用我们提出的 BPA 生成的图像具有更高的多样性和更优的质量。
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Rethinking Noise Sampling in Class-Imbalanced Diffusion Models
In the practical application of image generation, dealing with long-tailed data distributions is a common challenge for diffusion-based generative models. To tackle this issue, we investigate the head-class accumulation effect in diffusion models’ latent space, particularly focusing on its correlation to the noise sampling strategy. Our experimental analysis indicates that employing a consistent sampling distribution for the noise prior across all classes leads to a significant bias towards head classes in the noise sampling distribution, which results in poor quality and diversity of the generated images. Motivated by this observation, we propose a novel sampling strategy named Bias-aware Prior Adjusting (BPA) to debias diffusion models in the class-imbalanced scenario. With BPA, each class is automatically assigned an adaptive noise sampling distribution prior during training, effectively mitigating the influence of class imbalance on the generation process. Extensive experiments on several benchmarks demonstrate that images generated using our proposed BPA showcase elevated diversity and superior quality.
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