Frame-Level Captions for Long Video Generation with Complex Multi Scenes
Guangcong Zheng, Jianlong Yuan, Bo Wang, Haoyang Huang, Guoqing Ma, Nan Duan

TL;DR
This paper presents a novel method for generating long, complex videos from scripts by using frame-level annotations and attention mechanisms to improve scene accuracy and reduce error drift in diffusion models.
Contribution
It introduces a new dataset annotation technique and a frame-level attention mechanism to enhance long video generation with complex multi-scene stories.
Findings
Outperforms existing methods on VBench 2.0 benchmarks
Better adherence to complex scene instructions
Produces higher quality, more accurate long videos
Abstract
Generating long videos that can show complex stories, like movie scenes from scripts, has great promise and offers much more than short clips. However, current methods that use autoregression with diffusion models often struggle because their step-by-step process naturally leads to a serious error accumulation (drift). Also, many existing ways to make long videos focus on single, continuous scenes, making them less useful for stories with many events and changes. This paper introduces a new approach to solve these problems. First, we propose a novel way to annotate datasets at the frame-level, providing detailed text guidance needed for making complex, multi-scene long videos. This detailed guidance works with a Frame-Level Attention Mechanism to make sure text and video match precisely. A key feature is that each part (frame) within these windows can be guided by its own distinct text…
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Taxonomy
TopicsAdvanced Vision and Imaging · Video Analysis and Summarization · Video Coding and Compression Technologies
