Home Technology peripherals AI Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.

Jun 09, 2024 am 11:10 AM
industry video generation

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.
The AIxiv column is a column where this site publishes academic and technical content. In the past few years, the AIxiv column of this site has received more than 2,000 reports, covering top laboratories from major universities and companies around the world, effectively promoting academic exchanges and dissemination. If you have excellent work that you want to share, please feel free to contribute or contact us for reporting. Submission email: liyazhou@jiqizhixin.com; zhaoyunfeng@jiqizhixin.com

##Human dancing video generation is a compelling and challenging task Controlled video synthesis task, aiming to generate high-quality realistic continuous videos based on input reference images and target pose sequences. With the rapid development of video generation technology, especially the iterative evolution of generative models, the dancing video generation task has made unprecedented progress and demonstrated a wide range of application potential.

The existing methods can be roughly divided into two groups. The first group is typically based on a Generative Adversarial Network (GAN), which exploits an intermediate pose-guided representation to warp a reference appearance and generate reasonable video frames from previously warped targets. However, methods based on generative adversarial networks often suffer from unstable training and poor generalization capabilities, resulting in obvious artifacts and inter-frame jitter.
The second group uses the
diffusion model (Diffusion model)
to synthesize realistic videos. These methods have the advantages of stable training and strong transfer capabilities, and perform better than GAN-based methods. Typical methods include Disco, MagicAnimate, Animate Anyone, Champ, etc.
Although methods based on diffusion models have made significant progress, existing methods still have two limitations:
First, they require an additional reference network (ReferenceNet) To encode the reference image features and visually align them with the backbone branches of 3D-UNet, which increases the training difficulty and model parameters; second, they usually use temporal Transformer to model the temporal dependence between video frames, but the Transformer The computational relationship between complexity and the length of generated time becomes quadratic, which limits the timing length of generated videos
. Typical methods can only generate 24 frames of video, limiting practical deployment possibilities. Although the sliding window strategy of temporal overlap can generate longer videos, the team authors found that this method easily leads to problems of unsmooth transitions and appearance inconsistency at the overlapped junctions of segments.
In order to solve these problems, a research team from Huazhong University of Science and Technology, Alibaba, and University of Science and Technology of China proposed the
UniAnimate framework to achieve efficient and long-term Human video generation
.

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.

Paper address: https://arxiv.org/abs/2406.01188
  • Project homepage: https://unianimate.github.io/

Method Introduction
The UniAnimate framework first maps the reference image, pose guidance and noise video into the feature space, and then uses the
Unified Video Diffusion Model (Unified Video Diffusion Model)
to simultaneously process the reference image and video backbone branch table View alignment and video denoising tasks, achieving efficient feature alignment and coherent video generation.
Secondly, the research team also proposed a unified noise input that supports random noise input and conditional noise input based on the first frame. The random noise input can be combined with the reference The image and pose sequence generates a video, while the conditional noise input based on the first frame (First Frame Conditioning) uses the first frame of the video as a conditional input to continue to generate subsequent videos. In this way, inference can be generated by treating the last frame of the previous video segment as the first frame of the next segment, and so on to achieve long video generation in one framework.
Finally, in order to further efficiently process long sequences, the research team explored a time modeling architecture based on the state space model (Mamba) as the original computationally intensive time series Transformer. An alternative. Experiments have found that the architecture based on sequential Mamba can achieve similar effects to the sequential Transformer, but requires less graphics memory overhead.
Through the UniAnimate framework, users can generate high-quality time-series human dancing videos. It is worth mentioning that by using the First Frame Conditioning strategy multiple times, a one-minute high-definition video can be generated. Compared to traditional methods, UniAnimate has the following advantages:

  • No need for additional reference networks: The UniAnimate framework enables unified video The diffusion model eliminates the dependence on additional reference networks and reduces the training difficulty and the number of model parameters.
  • The pose map of the reference image is introduced as an additional reference condition, which promotes the network to learn the correspondence between the reference pose and the target pose, and achieves a good appearance Alignment.
  • Generate long sequence videos within a unified framework: By adding a unified noise input, UniAnimate is able to generate long-term videos within a frame, no longer subject to traditional methods time limit.
  • Highly consistent: The UniAnimate framework ensures the smooth transition effect of the generated video by iteratively using the first frame as a condition to generate subsequent frames, making the video More consistent and coherent in appearance. This strategy also allows users to generate multiple video clips and select the last frame of the clip with good results as the first frame of the next generated clip, making it easier for users to interact with the model and adjust the generation results as needed. However, when generating long videos using the sliding window strategy of previous time series overlap, segment selection cannot be performed because each video is coupled to each other in each step of the diffusion process.

The above characteristics make the UniAnimate framework perform well in synthesizing high-quality, long-term human dancing videos, providing opportunities for a wider range of applications. New possibilities.

Generation result example

1. Generate dancing videos based on synthesized images.

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.
2. Generate dancing videos based on real pictures.

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.

3. Dancing video generation based on clay style pictures.

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.

4. Musk dances.

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.

5. Yann LeCun dances.

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.

#6. Generate dancing videos based on other cross-domain images.

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.


7. Generate a one-minute dancing video. Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.
To obtain the original MP4 video and more HD video examples, please refer to the paper’s project homepage https://unianimate.github .io/.

Experimental comparative analysis

1. Compared with existing methods on TikTok Quantitative comparative experiments on data sets.

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.

As shown in the table above, the UniAnimate method has achieved the best results on image indicators such as L1, PSNR, SSIM, LPIPS and video indicator FVD. It shows that UniAnimate can produce high-fidelity results.

#2. Qualitative comparative experiments with existing methods.

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.

It can also be seen from the above qualitative comparative experiments that compared to MagicAnimate and Animate Anyone, the UniAnimate method can generate better continuous results without obvious artifacts, demonstrating the effectiveness of UniAnimate.

#3. Peeling experiment.

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.

It can be seen from the numerical results in the above table that the reference pose and unified video diffusion model used in UniAnimate play a key role in improving performance.

#4. Comparison of long video generation strategies.

Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.

As can be seen from the above figure, the commonly used timing overlap sliding window strategy to generate long videos can easily lead to discontinuous transitions. The research team believes that this is because of different windows. The difficulty of denoising is inconsistent in the overlapping parts of the time series, resulting in different generation results. Direct averaging will lead to obvious deformation or distortion, and this inconsistency will propagate errors. The first frame video continuation generation method used in this article can generate smooth transitions.

For more experimental comparison results and analysis, please refer to the original paper.

All in all, UniAnimate’s sample results and quantitative comparison results are very good. We look forward to UniAnimate’s application in various fields, such as film and television production, virtual reality and game industries, etc., for users Bringing a more realistic and exciting human image animation experience.

The above is the detailed content of Supports the synthesis of one-minute high-definition videos. Huake et al. proposed a new framework for human dancing video generation, UniAnimate.. For more information, please follow other related articles on the PHP Chinese website!

Statement of this Website
The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn

Hot AI Tools

Undresser.AI Undress

Undresser.AI Undress

AI-powered app for creating realistic nude photos

AI Clothes Remover

AI Clothes Remover

Online AI tool for removing clothes from photos.

Undress AI Tool

Undress AI Tool

Undress images for free

Clothoff.io

Clothoff.io

AI clothes remover

Video Face Swap

Video Face Swap

Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Article

Roblox: Bubble Gum Simulator Infinity - How To Get And Use Royal Keys
4 weeks ago By 尊渡假赌尊渡假赌尊渡假赌
Nordhold: Fusion System, Explained
4 weeks ago By 尊渡假赌尊渡假赌尊渡假赌
Mandragora: Whispers Of The Witch Tree - How To Unlock The Grappling Hook
3 weeks ago By 尊渡假赌尊渡假赌尊渡假赌

Hot Tools

Notepad++7.3.1

Notepad++7.3.1

Easy-to-use and free code editor

SublimeText3 Chinese version

SublimeText3 Chinese version

Chinese version, very easy to use

Zend Studio 13.0.1

Zend Studio 13.0.1

Powerful PHP integrated development environment

Dreamweaver CS6

Dreamweaver CS6

Visual web development tools

SublimeText3 Mac version

SublimeText3 Mac version

God-level code editing software (SublimeText3)

Hot Topics

Java Tutorial
1675
14
PHP Tutorial
1278
29
C# Tutorial
1257
24
DeepMind robot plays table tennis, and its forehand and backhand slip into the air, completely defeating human beginners DeepMind robot plays table tennis, and its forehand and backhand slip into the air, completely defeating human beginners Aug 09, 2024 pm 04:01 PM

But maybe he can’t defeat the old man in the park? The Paris Olympic Games are in full swing, and table tennis has attracted much attention. At the same time, robots have also made new breakthroughs in playing table tennis. Just now, DeepMind proposed the first learning robot agent that can reach the level of human amateur players in competitive table tennis. Paper address: https://arxiv.org/pdf/2408.03906 How good is the DeepMind robot at playing table tennis? Probably on par with human amateur players: both forehand and backhand: the opponent uses a variety of playing styles, and the robot can also withstand: receiving serves with different spins: However, the intensity of the game does not seem to be as intense as the old man in the park. For robots, table tennis

The first mechanical claw! Yuanluobao appeared at the 2024 World Robot Conference and released the first chess robot that can enter the home The first mechanical claw! Yuanluobao appeared at the 2024 World Robot Conference and released the first chess robot that can enter the home Aug 21, 2024 pm 07:33 PM

On August 21, the 2024 World Robot Conference was grandly held in Beijing. SenseTime's home robot brand "Yuanluobot SenseRobot" has unveiled its entire family of products, and recently released the Yuanluobot AI chess-playing robot - Chess Professional Edition (hereinafter referred to as "Yuanluobot SenseRobot"), becoming the world's first A chess robot for the home. As the third chess-playing robot product of Yuanluobo, the new Guoxiang robot has undergone a large number of special technical upgrades and innovations in AI and engineering machinery. For the first time, it has realized the ability to pick up three-dimensional chess pieces through mechanical claws on a home robot, and perform human-machine Functions such as chess playing, everyone playing chess, notation review, etc.

Claude has become lazy too! Netizen: Learn to give yourself a holiday Claude has become lazy too! Netizen: Learn to give yourself a holiday Sep 02, 2024 pm 01:56 PM

The start of school is about to begin, and it’s not just the students who are about to start the new semester who should take care of themselves, but also the large AI models. Some time ago, Reddit was filled with netizens complaining that Claude was getting lazy. "Its level has dropped a lot, it often pauses, and even the output becomes very short. In the first week of release, it could translate a full 4-page document at once, but now it can't even output half a page!" https:// www.reddit.com/r/ClaudeAI/comments/1by8rw8/something_just_feels_wrong_with_claude_in_the/ in a post titled "Totally disappointed with Claude", full of

At the World Robot Conference, this domestic robot carrying 'the hope of future elderly care' was surrounded At the World Robot Conference, this domestic robot carrying 'the hope of future elderly care' was surrounded Aug 22, 2024 pm 10:35 PM

At the World Robot Conference being held in Beijing, the display of humanoid robots has become the absolute focus of the scene. At the Stardust Intelligent booth, the AI ​​robot assistant S1 performed three major performances of dulcimer, martial arts, and calligraphy in one exhibition area, capable of both literary and martial arts. , attracted a large number of professional audiences and media. The elegant playing on the elastic strings allows the S1 to demonstrate fine operation and absolute control with speed, strength and precision. CCTV News conducted a special report on the imitation learning and intelligent control behind "Calligraphy". Company founder Lai Jie explained that behind the silky movements, the hardware side pursues the best force control and the most human-like body indicators (speed, load) etc.), but on the AI ​​side, the real movement data of people is collected, allowing the robot to become stronger when it encounters a strong situation and learn to evolve quickly. And agile

ACL 2024 Awards Announced: One of the Best Papers on Oracle Deciphering by HuaTech, GloVe Time Test Award ACL 2024 Awards Announced: One of the Best Papers on Oracle Deciphering by HuaTech, GloVe Time Test Award Aug 15, 2024 pm 04:37 PM

At this ACL conference, contributors have gained a lot. The six-day ACL2024 is being held in Bangkok, Thailand. ACL is the top international conference in the field of computational linguistics and natural language processing. It is organized by the International Association for Computational Linguistics and is held annually. ACL has always ranked first in academic influence in the field of NLP, and it is also a CCF-A recommended conference. This year's ACL conference is the 62nd and has received more than 400 cutting-edge works in the field of NLP. Yesterday afternoon, the conference announced the best paper and other awards. This time, there are 7 Best Paper Awards (two unpublished), 1 Best Theme Paper Award, and 35 Outstanding Paper Awards. The conference also awarded 3 Resource Paper Awards (ResourceAward) and Social Impact Award (

Li Feifei's team proposed ReKep to give robots spatial intelligence and integrate GPT-4o Li Feifei's team proposed ReKep to give robots spatial intelligence and integrate GPT-4o Sep 03, 2024 pm 05:18 PM

Deep integration of vision and robot learning. When two robot hands work together smoothly to fold clothes, pour tea, and pack shoes, coupled with the 1X humanoid robot NEO that has been making headlines recently, you may have a feeling: we seem to be entering the age of robots. In fact, these silky movements are the product of advanced robotic technology + exquisite frame design + multi-modal large models. We know that useful robots often require complex and exquisite interactions with the environment, and the environment can be represented as constraints in the spatial and temporal domains. For example, if you want a robot to pour tea, the robot first needs to grasp the handle of the teapot and keep it upright without spilling the tea, then move it smoothly until the mouth of the pot is aligned with the mouth of the cup, and then tilt the teapot at a certain angle. . this

Distributed Artificial Intelligence Conference DAI 2024 Call for Papers: Agent Day, Richard Sutton, the father of reinforcement learning, will attend! Yan Shuicheng, Sergey Levine and DeepMind scientists will give keynote speeches Distributed Artificial Intelligence Conference DAI 2024 Call for Papers: Agent Day, Richard Sutton, the father of reinforcement learning, will attend! Yan Shuicheng, Sergey Levine and DeepMind scientists will give keynote speeches Aug 22, 2024 pm 08:02 PM

Conference Introduction With the rapid development of science and technology, artificial intelligence has become an important force in promoting social progress. In this era, we are fortunate to witness and participate in the innovation and application of Distributed Artificial Intelligence (DAI). Distributed artificial intelligence is an important branch of the field of artificial intelligence, which has attracted more and more attention in recent years. Agents based on large language models (LLM) have suddenly emerged. By combining the powerful language understanding and generation capabilities of large models, they have shown great potential in natural language interaction, knowledge reasoning, task planning, etc. AIAgent is taking over the big language model and has become a hot topic in the current AI circle. Au

Hongmeng Smart Travel S9 and full-scenario new product launch conference, a number of blockbuster new products were released together Hongmeng Smart Travel S9 and full-scenario new product launch conference, a number of blockbuster new products were released together Aug 08, 2024 am 07:02 AM

This afternoon, Hongmeng Zhixing officially welcomed new brands and new cars. On August 6, Huawei held the Hongmeng Smart Xingxing S9 and Huawei full-scenario new product launch conference, bringing the panoramic smart flagship sedan Xiangjie S9, the new M7Pro and Huawei novaFlip, MatePad Pro 12.2 inches, the new MatePad Air, Huawei Bisheng With many new all-scenario smart products including the laser printer X1 series, FreeBuds6i, WATCHFIT3 and smart screen S5Pro, from smart travel, smart office to smart wear, Huawei continues to build a full-scenario smart ecosystem to bring consumers a smart experience of the Internet of Everything. Hongmeng Zhixing: In-depth empowerment to promote the upgrading of the smart car industry Huawei joins hands with Chinese automotive industry partners to provide

See all articles