CVAICLGRLGApr 6, 2022

KNN-Diffusion: Image Generation via Large-Scale Retrieval

Meta AI
arXiv:2204.02849v2160 citationsh-index: 29
AI Analysis

This enables image generation in domains with scarce or unlabeled data, addressing a practical bottleneck for deploying such models.

The paper tackles the problem of training text-to-image models without paired text data by proposing a method using large-scale retrieval with k-Nearest-Neighbors, achieving state-of-the-art results as evaluated by human studies and automatic metrics.

Recent text-to-image models have achieved impressive results. However, since they require large-scale datasets of text-image pairs, it is impractical to train them on new domains where data is scarce or not labeled. In this work, we propose using large-scale retrieval methods, in particular, efficient k-Nearest-Neighbors (kNN), which offers novel capabilities: (1) training a substantially small and efficient text-to-image diffusion model without any text, (2) generating out-of-distribution images by simply swapping the retrieval database at inference time, and (3) performing text-driven local semantic manipulations while preserving object identity. To demonstrate the robustness of our method, we apply our kNN approach on two state-of-the-art diffusion backbones, and show results on several different datasets. As evaluated by human studies and automatic metrics, our method achieves state-of-the-art results compared to existing approaches that train text-to-image generation models using images only (without paired text data)

Foundations

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