Accuracy and Fidelity Comparison of Luna and DALL-E 2 Diffusion-Based Image Generation Systems

01/05/2023
by   Michael Cahyadi, et al.
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We qualitatively examine the accuracy and fideltiy between two diffusion-based image generation systems, namely DALL-E 2 and Luna, which have massive differences in training datasets, algorithmic approaches, prompt resolvement, and output upscaling. In our research we conclude that DALL-E 2 significantly edges Luna in both alignment and fidelity comparisons

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