运动模糊下协同标记的高精度三维重建

Yun Shi, C. Tao, Xiaoping Wang, Liyan Zhang
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引用次数: 1

摘要

人工智能和深度学习在无线通信、图像和语音识别、三维重建等领域的应用成功地解决了一些困难的建模问题。本文主要研究了运动模糊协同标记的高精度三维重建,包括汉字编码目标和非编码圆形标记。构建了基于仿真的运动模糊图像生成模型,为训练卷积神经网络识别和匹配运动物体上的运动模糊cct提供了足够的样本。模糊的非编码标记匹配是通过单应性实现的。通过优化曝光周期内的空间运动路径,实现标记物的三维重建。以标记物移动路径的中点作为最终重建结果。实验结果表明,具有一定运动模糊效果的标记物三维重建精度约为0.08 mm。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-Precision 3D Reconstruction of Cooperative Markers under Motion Blur
The application of artificial intelligence and deep learning in the fields of wireless communication, image and speech recognition, and 3D reconstruction has successfully solved some difficult modeling problems. This paper focuses on the high-precision 3D reconstruction of the motion-blurred cooperative markers, including the Chinese character coded targets (CCTs) and the noncoded circular markers. A simulation-based motion-blurred image generation model is constructed to provide sufficient samples for training the convolutional neural network to identify and match the motion-blurred CCTs on the moving object. The blurred noncoded marker matching is performed through homography. The 3D reconstruction of the markers is realized via the optimization of the spatial moving path within the exposure period. The midpoint of the moving path of the markers is taken as the final reconstruction result. The experimental results show that the 3D reconstruction accuracy of the markers with a certain motion blur effect is about 0.08 mm.
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