KEYWORDS: Head, Image processing, Data modeling, Detection and tracking algorithms, Video, 3D image processing, Calibration, Reconstruction algorithms, 3D modeling, Cameras
The development of methods and tools for 3D body reconstruction has become an important research area in computer animation. Relevant research shows that 3D reconstruction directly depends on monocular video data needs a lot of computation. Therefore, existing methods can’t meet the requirements of fast real-time 3D body joint computing. With the help of deep learning and pattern recognition, we can easily obtain a large number of continuous two-dimensional joint data from video. In this paper, we propose a fast 3D body reconstruction method with continuous two-dimensional human joint data. We use the expected position to solve the problem of Ambiguity from monocular data restoration. Base on the predefined body pose, we can get continuous 3D joint data quickly, and our result show this method has a good performance in the situation of rapid change of motion amplitude and speed.
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