TL;DR
This paper improves rectified flow generative models by incorporating real images into training, reducing computational costs, and achieving higher image quality with more efficient and robust ODE paths.
Contribution
It introduces a novel method that integrates real images into rectified flow training, enhancing efficiency and performance over the original approach.
Findings
Significantly better FID scores on CIFAR-10.
Reduced reliance on large generated datasets.
Induces straighter ODE paths and avoids saturation.
Abstract
Rectified flow is a generative model that learns smooth transport mappings between two distributions through an ordinary differential equation (ODE). Unlike diffusion-based generative models, which require costly numerical integration of a generative ODE to sample images with state-of-the-art quality, rectified flow uses an iterative process called reflow to learn smooth and straight ODE paths. This allows for relatively simple and efficient generation of high-quality images. However, rectified flow still faces several challenges. 1) The reflow process requires a large number of generative pairs to preserve the target distribution, leading to significant computational costs. 2) Since the model is typically trained using only generated image pairs, its performance heavily depends on the 1-rectified flow model, causing it to become biased towards the generated data. In this work, we…
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