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Contemporary diffusion models built upon U-Net or Diffusion Transformer (DiT) architectures have revolutionized image generation through transformer-based attention mechanisms. The prevailing paradigm has commonly employed self-attention with quadratic computational complexity to handle global spatial relationships in complex images, thereby synthesizing high-fidelity images with coherent visual semantics. Contrary to conventional wisdom, our systematic layer-wise analysis reveals an interesting discrepancy: self-attention in pre-trained diffusion models predominantly exhibits localized attention patterns, closely resembling convolutional inductive biases. While the global interactions in self-attention is smooth and low-intensity and may be less critical than commonly assumed. Driven by this, we propose (\Delta)ConvFusion to replace conventional self-attention modules with Pyramid Convolution Blocks ((\Delta)ConvBlocks). By distilling attention patterns into localized convolutional operations while keeping other components frozen, (\Delta)ConvFusion achieves performance comparable to transformer-based counterparts while reducing computational cost by 6929x and surpassing LinFusion by 5.42x in efficiency--all without compromising generative fidelity.