3D Moving Object Reconstruction by Temporal Accumulation

Anas Abuzaina, M. Nixon, J. Carter
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引用次数: 1

Abstract

Much progress has been made recently in the development of 3D acquisition technologies, which increased the availability of low-cost 3D sensors, such as the Microsoft Kinect. This promotes a wide variety of computer vision applications needing object recognition and 3D reconstruction. We present a novel algorithm for full 3D reconstruction of unknown rotating objects in 2.5D point cloud sequences, such as those generated by 3D sensors. Our algorithm incorporates structural and temporal motion information to build 3D models of moving objects and is based on motion compensated temporal accumulation. The proposed algorithm requires only the fixed centre or axis of rotation, unlike other 3D reconstruction methods, it does not require key point detection, feature description, correspondence matching, provided object models or any geometric information about the object. Moreover, our algorithm integrally estimates the best rigid transformation parameters for registration, applies surface resembling, reduces noise and estimates the optimum angular velocity of the rotating object.
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三维运动物体的时间累积重建
最近在3D采集技术的发展方面取得了很大进展,这增加了低成本3D传感器的可用性,例如微软的Kinect。这促进了需要对象识别和3D重建的各种计算机视觉应用。我们提出了一种新的算法,用于2.5D点云序列中未知旋转物体的全三维重建,例如由3D传感器生成的点云序列。我们的算法结合结构和时间运动信息来建立运动物体的三维模型,并基于运动补偿时间积累。该算法只需要固定的中心或旋转轴,与其他三维重建方法不同,它不需要关键点检测、特征描述、对应匹配、提供物体模型或物体的任何几何信息。此外,该算法综合估计了配准的最佳刚性变换参数,应用表面相似,降低了噪声,并估计了旋转物体的最佳角速度。
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