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Hauptverfasser: Li, Xiaozhe, WU, Kai, Yang, Siyi, Qu, YiZhan, Zhang, Guohua., Chen, Zhiyu, Li, Jiayao, Mu, Jiangchuan, Hu, Xiaobin, Fang, Wen, Xiong, Mingliang, Deng, Hao, Liu, Qingwen, Li, Gang, He, Bin
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2412.12223
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author Li, Xiaozhe
WU, Kai
Yang, Siyi
Qu, YiZhan
Zhang, Guohua.
Chen, Zhiyu
Li, Jiayao
Mu, Jiangchuan
Hu, Xiaobin
Fang, Wen
Xiong, Mingliang
Deng, Hao
Liu, Qingwen
Li, Gang
He, Bin
author_facet Li, Xiaozhe
WU, Kai
Yang, Siyi
Qu, YiZhan
Zhang, Guohua.
Chen, Zhiyu
Li, Jiayao
Mu, Jiangchuan
Hu, Xiaobin
Fang, Wen
Xiong, Mingliang
Deng, Hao
Liu, Qingwen
Li, Gang
He, Bin
contents Recent advancements in text-to-video (T2V) generation have leveraged diffusion models to enhance visual coherence in videos synthesized from textual descriptions. However, existing research primarily focuses on object motion, often overlooking cinematic language, which is crucial for conveying emotion and narrative pacing in cinematography. To address this, we propose a threefold approach to improve cinematic control in T2V models. First, we introduce a meticulously annotated cinematic language dataset with twenty subcategories, covering shot framing, shot angles, and camera movements, enabling models to learn diverse cinematic styles. Second, we present CameraDiff, which employs LoRA for precise and stable cinematic control, ensuring flexible shot generation. Third, we propose CameraCLIP, designed to evaluate cinematic alignment and guide multi-shot composition. Building on CameraCLIP, we introduce CLIPLoRA, a CLIP-guided dynamic LoRA composition method that adaptively fuses multiple pre-trained cinematic LoRAs, enabling smooth transitions and seamless style blending. Experimental results demonstrate that CameraDiff ensures stable and precise cinematic control, CameraCLIP achieves an R@1 score of 0.83, and CLIPLoRA significantly enhances multi-shot composition within a single video, bridging the gap between automated video generation and professional cinematography.\textsuperscript{1}
format Preprint
id arxiv_https___arxiv_org_abs_2412_12223
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Can video generation replace cinematographers? Research on the cinematic language of generated video
Li, Xiaozhe
WU, Kai
Yang, Siyi
Qu, YiZhan
Zhang, Guohua.
Chen, Zhiyu
Li, Jiayao
Mu, Jiangchuan
Hu, Xiaobin
Fang, Wen
Xiong, Mingliang
Deng, Hao
Liu, Qingwen
Li, Gang
He, Bin
Computer Vision and Pattern Recognition
Artificial Intelligence
Recent advancements in text-to-video (T2V) generation have leveraged diffusion models to enhance visual coherence in videos synthesized from textual descriptions. However, existing research primarily focuses on object motion, often overlooking cinematic language, which is crucial for conveying emotion and narrative pacing in cinematography. To address this, we propose a threefold approach to improve cinematic control in T2V models. First, we introduce a meticulously annotated cinematic language dataset with twenty subcategories, covering shot framing, shot angles, and camera movements, enabling models to learn diverse cinematic styles. Second, we present CameraDiff, which employs LoRA for precise and stable cinematic control, ensuring flexible shot generation. Third, we propose CameraCLIP, designed to evaluate cinematic alignment and guide multi-shot composition. Building on CameraCLIP, we introduce CLIPLoRA, a CLIP-guided dynamic LoRA composition method that adaptively fuses multiple pre-trained cinematic LoRAs, enabling smooth transitions and seamless style blending. Experimental results demonstrate that CameraDiff ensures stable and precise cinematic control, CameraCLIP achieves an R@1 score of 0.83, and CLIPLoRA significantly enhances multi-shot composition within a single video, bridging the gap between automated video generation and professional cinematography.\textsuperscript{1}
title Can video generation replace cinematographers? Research on the cinematic language of generated video
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2412.12223