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首页> 外文期刊>Computational Intelligence and AI in Games, IEEE Transactions on >Automated 3-D Animation From Snooker Videos With Information-Theoretical Optimization
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Automated 3-D Animation From Snooker Videos With Information-Theoretical Optimization

机译:信息理论优化的斯诺克视频中的自动3-D动画

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摘要

Automated 3-D modeling from real sports videos can provide useful resources for visual design in sports-related computer games, saving a lot of effort in manual design of visual contents. However, image-based 3-D reconstruction usually suffers from inaccuracy caused by statistic image analysis. In this paper, we propose an information-theoretical scheme to minimize errors of automated 3-D modeling from monocular sports videos. In the proposed scheme, mutual information (MI) was exploited to compute the fitting scores of a 3-D model against the observed single-view scene, and the optimization of model fitting was carried out subsequently. With this optimization scheme, errors in model fitting were minimized without human intervention, allowing automated reconstruction of 3-D animation from consecutive monocular video frames at high accuracy. In our work, the Snooker videos were taken as our case study, balls were positioned in 3-D space from single-view frames, and 3-D animation was reproduced from real Snooker videos. Our experimental results validated that the proposed information-theoretical scheme can help attain better accuracy in the automated reconstruction of 3-D animation, and demonstrated that information-theoretical evaluation can be an effective approach for model-based reconstruction from single-view videos.
机译:来自真实体育视频的自动3-D建模可以为体育相关的计算机游戏中的视觉设计提供有用的资源,从而节省了手动设计视觉内容的工作量。但是,基于图像的3D重建通常会遭受统计图像分析引起的误差。在本文中,我们提出了一种信息理论方案,以最大程度地减少单眼体育视频中自动3-D建模的误差。在提出的方案中,利用互信息(MI)来计算3-D模型对观察到的单视图场景的拟合得分,然后对模型拟合进行优化。通过这种优化方案,无需人工干预,模型拟合中的错误就可以最小化,从而可以从连续的单眼视频帧中以高精度自动重建3D动画。在我们的工作中,将斯诺克视频作为案例研究,将球放置在单视图框架的3D空间中,并从真实的斯诺克视频中复制3D动画。我们的实验结果验证了所提出的信息理论方案可以帮助在3D动画的自动重建中获得更高的准确性,并证明了信息理论评估可以是从单视点视频进行基于模型的重建的有效方法。

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