Dynamic Prompting of Frozen Text-to-Image Diffusion Models for Panoptic Narrative Grounding

Hongyu Li, Tianrui Hui, Zihan Ding, Jing Zhang, Bin Ma, Xiaoming Wei, Jizhong Han, Si Liu
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Abstract

Panoptic narrative grounding (PNG), whose core target is fine-grained image-text alignment, requires a panoptic segmentation of referred objects given a narrative caption. Previous discriminative methods achieve only weak or coarse-grained alignment by panoptic segmentation pretraining or CLIP model adaptation. Given the recent progress of text-to-image Diffusion models, several works have shown their capability to achieve fine-grained image-text alignment through cross-attention maps and improved general segmentation performance. However, the direct use of phrase features as static prompts to apply frozen Diffusion models to the PNG task still suffers from a large task gap and insufficient vision-language interaction, yielding inferior performance. Therefore, we propose an Extractive-Injective Phrase Adapter (EIPA) bypass within the Diffusion UNet to dynamically update phrase prompts with image features and inject the multimodal cues back, which leverages the fine-grained image-text alignment capability of Diffusion models more sufficiently. In addition, we also design a Multi-Level Mutual Aggregation (MLMA) module to reciprocally fuse multi-level image and phrase features for segmentation refinement. Extensive experiments on the PNG benchmark show that our method achieves new state-of-the-art performance.
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为全景叙事接地而动态提示冻结文本到图像的扩散模型
全景叙事接地(PNG)的核心目标是细粒度图像-文本配准,它需要在叙事标题下对所指对象进行全景分割。以前的判别方法只能通过全景分割预训练或 CLIP 模型适应来实现微弱或粗粒度的配准。鉴于文本到图像扩散模型最近取得的进展,有几项研究表明它们有能力通过交叉注意图实现精细的图像-文本配准,并提高一般分割性能。然而,直接使用短语特征作为静态提示,将冻结的 Diffusion 模型应用到 PNG 任务中,仍然存在较大的任务差距和视觉语言交互不足的问题,导致性能较差。因此,我们在 Diffusion UNet 中提出了提取-注入短语适配器(EIPA)旁路,利用图像特征动态更新短语提示,并将多模态线索注入回来,从而更有效地利用了 Diffusion 模型的精细图像-文本配准能力。此外,我们还设计了一个多级相互聚合(MLMA)模块,用于相互融合多级图像和短语特征以细化分割。在 PNG 基准上进行的大量实验表明,我们的方法达到了最先进的新性能。
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