The surface edge explorer (SEE): A measurement-direct approach to next best view planning

被引:0
作者
Border, Rowan [1 ,2 ]
Gammell, Jonathan D. [1 ]
机构
[1] Univ Oxford, Oxford Robot Inst ORI, Dept Engn Sci, Estimat Search & Planning ESP Res Grp, Oxford, England
[2] Univ Oxford, Oxford Robot Inst, 23 Banbury Rd, Oxford OX2 6NN, England
基金
英国工程与自然科学研究理事会;
关键词
3D reconstruction; active vision; view planning; next best view; pointcloud representation; measurement-direct approach; 3-DIMENSIONAL OBJECT RECONSTRUCTION; AUTONOMOUS EXPLORATION; ENVIRONMENTS; ALGORITHMS; ONLINE; LOCATION; MINIMAX;
D O I
10.1177/02783649241230098
中图分类号
TP24 [机器人技术];
学科分类号
080202 ; 1405 ;
摘要
High-quality observations of the real world are crucial for a variety of applications, including producing 3D printed replicas of small-scale scenes and conducting inspections of large-scale infrastructure. These 3D observations are commonly obtained by combining multiple sensor measurements from different views. Guiding the selection of suitable views is known as the Next Best View (NBV) planning problem. Most NBV approaches reason about measurements using rigid data structures (e.g., surface meshes or voxel grids). This simplifies next best view selection but can be computationally expensive, reduces real-world fidelity and couples the selection of a next best view with the final data processing. This paper presents the Surface Edge Explorer (SEE), a NBV approach that selects new observations directly from previous sensor measurements without requiring rigid data structures. SEE uses measurement density to propose next best views that increase coverage of insufficiently observed surfaces while avoiding potential occlusions. Statistical results from simulated experiments show that SEE can attain similar or better surface coverage with less observation time and travel distance than evaluated volumetric approaches on both small- and large-scale scenes. Real-world experiments demonstrate SEE autonomously observing a deer statue using a 3D sensor affixed to a robotic arm.
引用
收藏
页码:1506 / 1532
页数:27
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