On 3D Model Construction by Fusing Heterogeneous Sensor Data

Wang Y.F., Wang J.F.
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Abstract

In this paper, we propose a scheme for 3D model construction by fusing heterogeneous sensor data. The proposed scheme is intended for use in an environment where multiple, heterogeneous sensors operate asynchronously. Surface depth, orientation, and curvature measurements obtained from multiple sensors and vantage points are incorporated to construct a computer description of the imaged object. The proposed scheme uses Kalman filter as the sensor data integration tool and hierarchical spline surface as the recording data structure. Kalman filter is used to obtain statistically optimal estimates of the imaged surface structure based on possibly noisy sensor measurements. Hierarchical spline surface is used as the representation scheme because it maintains high-order surface derivative continuity, may be adaptively refined, and is storage efficient. We show in this paper how these mathematical tools can be used in designing a modeling scheme to fuse heterogeneous sensor data.

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基于异构传感器数据融合的三维模型构建研究
本文提出了一种融合异构传感器数据的三维模型构建方案。所提出的方案旨在用于多个异构传感器异步操作的环境。从多个传感器和有利位置获得的表面深度,方向和曲率测量值被合并以构建成像物体的计算机描述。该方案采用卡尔曼滤波作为传感器数据集成工具,分层样条曲面作为记录数据结构。基于可能存在噪声的传感器测量,采用卡尔曼滤波对图像表面结构进行统计最优估计。采用层次样条曲面表示,具有保持高阶曲面导数连续性、可自适应细化、存储效率高等优点。我们在本文中展示了如何使用这些数学工具来设计建模方案以融合异构传感器数据。
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