CVFeb 11, 2025

Magic 1-For-1: Generating One Minute Video Clips within One Minute

arXiv:2502.07701v38 citationsh-index: 15Has Code
Originality Incremental advance
AI Analysis

This addresses the computational bottleneck in video generation for AI and creative applications, though it is incremental with optimizations on existing methods.

The paper tackles efficient video generation by factorizing text-to-video into text-to-image and image-to-video tasks, achieving generation of 5-second clips in 3 seconds and minute-long videos within one minute with improved quality.

In this technical report, we present Magic 1-For-1 (Magic141), an efficient video generation model with optimized memory consumption and inference latency. The key idea is simple: factorize the text-to-video generation task into two separate easier tasks for diffusion step distillation, namely text-to-image generation and image-to-video generation. We verify that with the same optimization algorithm, the image-to-video task is indeed easier to converge over the text-to-video task. We also explore a bag of optimization tricks to reduce the computational cost of training the image-to-video (I2V) models from three aspects: 1) model convergence speedup by using a multi-modal prior condition injection; 2) inference latency speed up by applying an adversarial step distillation, and 3) inference memory cost optimization with parameter sparsification. With those techniques, we are able to generate 5-second video clips within 3 seconds. By applying a test time sliding window, we are able to generate a minute-long video within one minute with significantly improved visual quality and motion dynamics, spending less than 1 second for generating 1 second video clips on average. We conduct a series of preliminary explorations to find out the optimal tradeoff between computational cost and video quality during diffusion step distillation and hope this could be a good foundation model for open-source explorations. The code and the model weights are available at https://github.com/DA-Group-PKU/Magic-1-For-1.

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