CVLGMar 20, 2025

EDiT: Efficient Diffusion Transformers with Linear Compressed Attention

arXiv:2503.16726v27 citationsh-index: 7
Originality Incremental advance
AI Analysis

This addresses efficiency bottlenecks for higher-resolution image generation or resource-limited devices, representing an incremental improvement.

The paper tackled the quadratic scaling inefficiency of attention in Diffusion Transformers (DiTs) for text-to-image synthesis by introducing EDiT and MM-EDiT, which achieved up to 2.2x speedup with comparable image quality.

Diffusion Transformers (DiTs) have emerged as a leading architecture for text-to-image synthesis, producing high-quality and photorealistic images. However, the quadratic scaling properties of the attention in DiTs hinder image generation with higher resolution or on devices with limited resources. This work introduces an efficient diffusion transformer (EDiT) to alleviate these efficiency bottlenecks in conventional DiTs and Multimodal DiTs (MM-DiTs). First, we present a novel linear compressed attention method that uses a multi-layer convolutional network to modulate queries with local information while keys and values are aggregated spatially. Second, we formulate a hybrid attention scheme for multimodal inputs that combines linear attention for image-to-image interactions and standard scaled dot-product attention for interactions involving prompts. Merging these two approaches leads to an expressive, linear-time Multimodal Efficient Diffusion Transformer (MM-EDiT). We demonstrate the effectiveness of the EDiT and MM-EDiT architectures by integrating them into PixArt-Sigma (conventional DiT) and Stable Diffusion 3.5-Medium (MM-DiT), achieving up to 2.2x speedup with comparable image quality after distillation.

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