Enhanced Multi-Scale Cross-Attention for Person Image Generation

Hao Tang;Ling Shao;Nicu Sebe;Luc Van Gool
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Abstract

In this paper, we propose a novel cross-attention-based generative adversarial network (GAN) for the challenging person image generation task. Cross-attention is a novel and intuitive multi-modal fusion method in which an attention/correlation matrix is calculated between two feature maps of different modalities. Specifically, we propose the novel XingGAN (or CrossingGAN), which consists of two generation branches that capture the person's appearance and shape, respectively. Moreover, we propose two novel cross-attention blocks to effectively transfer and update the person's shape and appearance embeddings for mutual improvement. This has not been considered by any other existing GAN-based image generation work. To further learn the long-range correlations between different person poses at different scales and sub-regions, we propose two novel multi-scale cross-attention blocks. To tackle the issue of independent correlation computations within the cross-attention mechanism leading to noisy and ambiguous attention weights, which hinder performance improvements, we propose a module called enhanced attention (EA). Lastly, we introduce a novel densely connected co-attention module to fuse appearance and shape features at different stages effectively. Extensive experiments on two public datasets demonstrate that the proposed method outperforms current GAN-based methods and performs on par with diffusion-based methods. However, our method is significantly faster than diffusion-based methods in both training and inference.
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用于生成人物图像的增强型多尺度交叉注意力
在本文中,我们提出了一种新的基于交叉注意的生成对抗网络(GAN),用于具有挑战性的人物图像生成任务。交叉注意是一种新颖、直观的多模态融合方法,它在两个不同模态的特征映射之间计算注意/关联矩阵。具体来说,我们提出了一种新颖的XingGAN(或CrossingGAN),它由两个代分支组成,分别捕捉人的外表和形状。此外,我们提出了两种新的交叉注意块来有效地转移和更新人的形状和外观嵌入,以实现相互改进。这是任何其他现有的基于gan的图像生成工作都没有考虑到的。为了进一步了解不同人姿在不同尺度和子区域之间的长期相关性,我们提出了两个新的多尺度交叉注意块。为了解决交叉注意机制中的独立相关计算导致的噪声和模糊的注意权重,从而阻碍性能改进的问题,我们提出了一个称为增强注意(EA)的模块。最后,我们引入了一种新颖的密集连接的共关注模块,有效地融合了不同阶段的外观和形状特征。在两个公共数据集上的大量实验表明,该方法优于当前基于gan的方法,并与基于扩散的方法相当。然而,我们的方法在训练和推理方面都明显快于基于扩散的方法。
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