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A New Algorithm for the Establishing Data Association Between a Camera and a 2-D LIDAR 被引量:6

A New Algorithm for the Establishing Data Association Between a Camera and a 2-D LIDAR
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摘要 In this paper,we propose a new algorithm to establish the data association between a camera and a 2-D Light Detection And Ranging sensor (LIDAR).In contrast to the previous works,where data association is established by calibrating the intrinsic parameters of the camera and the extrinsic parameters of the camera and the LIDAR,we formulate the map between laser points and pixels as a 2-D homography.The line-point correspondence is employed to construct geometric constraint on the homography matrix.This enables checkerboard to be not essential and any object with straight boundary can be an effective target.The calculation of the 2-D homography matrix consists of a linear least-squares solution of a homogeneous system followed by a nonlinear minimization of the geometric error in the image plane.Since the measurement quality impacts on the accuracy of the result,we investigate the equivalent constraint and show that placing the calibration target nearby the 2-D LIDAR will provide sufficient constraints to calculate the 2-D homography matrix.Simulation and experimental results validate that the proposed algorithm is robust and accurate.Compared with the previous works,which require two calibration processes and special calibration targets such as checkerboard,our method is more flexible and easier to perform. In this paper,we propose a new algorithm to establish the data association between a camera and a 2-D Light Detection And Ranging sensor (LIDAR).In contrast to the previous works,where data association is established by calibrating the intrinsic parameters of the camera and the extrinsic parameters of the camera and the LIDAR,we formulate the map between laser points and pixels as a 2-D homography.The line-point correspondence is employed to construct geometric constraint on the homography matrix.This enables checkerboard to be not essential and any object with straight boundary can be an effective target.The calculation of the 2-D homography matrix consists of a linear least-squares solution of a homogeneous system followed by a nonlinear minimization of the geometric error in the image plane.Since the measurement quality impacts on the accuracy of the result,we investigate the equivalent constraint and show that placing the calibration target nearby the 2-D LIDAR will provide sufficient constraints to calculate the 2-D homography matrix.Simulation and experimental results validate that the proposed algorithm is robust and accurate.Compared with the previous works,which require two calibration processes and special calibration targets such as checkerboard,our method is more flexible and easier to perform.
出处 《Tsinghua Science and Technology》 SCIE EI CAS 2014年第3期314-322,共9页 清华大学学报(自然科学版(英文版)
基金 supported in part by the National Natural Science Foundation of China (Nos. 90820305 and 60775040) the National High-Tech Research and Development (863) Program of China (No. 2012AA041402)
关键词 sensor fusion 2-D homography extrinsic calibration camera calibration sensor fusion 2-D homography extrinsic calibration camera calibration
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  • 1Oren M, Papageorgiou C, Sinha P, et al. Pedestrian detec?tion using wavelet templates. In: IEEE Conference on Computer Vision and Pattern Recognition. San Juan, Puerto Rico, 1997: 193-199.
  • 2Papageorgiou C, Oren M, Poggio T. A general framework for object detection. In: IEEE International Conference on Computer Vision. Bombay, India, 1998: 555-562.
  • 3Papageorgiou C, Poggio T. A trainable system for object detection. International Journal of Computer Vision, 2000, 38(1): 15-33.
  • 4Gavrila D, Philomin V. Real-time object detection for smart vehicles. In: IEEE International Conference on Computer Vision. Kerkyra, Corfu, Greece, 1999: 87-93.
  • 5Felzenszwalb P. Learning models for object recognition. In: IEEE Conference on Computer Vision and Pattern Recog?nition. Kauai, HI, USA, 2001: 1056-1062.
  • 6Viola P, Jones M, Snow D. Detecting pedestrians using patterns of motion and appearance. In: IEEE International Conference on Computer Vision. Nice, France, 2003: 734-741.
  • 7Leibe B, Seemann E, Schiele B. Pedestrian detection in crowded scenes. In: IEEE Conference on Computer Vision and Pattern Recognition. San Diego, CA, USA, 2005: 878-885.
  • 8Mikolajczyk K, Leibe B, Schiele B. Local features for object class recognition. In: IEEE International Conference on Computer Vision. Beijing, China, 2005: 1792-1799.
  • 9Dalai N, Triggs B. Histograms of oriented gradients for human detection. In: IEEE Conference on Computer Vision and Pattern Recognition. San Diego, CA, USA, 2005: 886-893.
  • 10Zhu Q, Avidan S, Yeh M, et al. Fast human detection using a cascade of histograms of oriented gradients. In: IEEE Conference on Computer Vision and Pattern Recognition. New York, NY, USA, 2006: 1491-1498.

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  • 2刘今越,唐旭,贾晓辉,杨冬,李铁军.三维激光雷达-相机间外参的高效标定方法[J].仪器仪表学报,2019,40(11):64-72. 被引量:12
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  • 4尚涛,贺会超,王昕,宫文斌,戴永强.二维激光雷达实现三维成像的算法[J].吉林大学学报(工学版),2012,42(S1):91-95. 被引量:4
  • 5MAJDIK A L, SZOKE 1, TAMAS L. Laser and vision based map building techniques for mobile robot navigation [ C ]. 17th IEEE International Cotffereuce on Automation Quality and Testing Robotics AQTR, Cluj-Napoca, Romania, 2010: 360-365.
  • 6ZHOU L. Fusing laser point cloud and visual image at data level using a new reconstruction algorithm [ C ]. In- telligent Vehicles Symposium (Ⅳ), Piscataway, N J, USA, 2013 : 1356-1361.
  • 7ZHANG Q, PLESS R. Extrinsic calibration of a camera and laser range finder (improves camera calibration)[ C ]. IEEE International Conference on Intelligent Robots and Systems, Sendai, Japan, 2004,3: 2301-2306.
  • 8PANDEY G, MCBRIDE J, SAVARESE S, et al. Extrin- sic calibration of a 3D laser scanner and an omnidirec- tional camera [ C ]. 7th IFAC Symposium on Intelligent Autonomous Vehicles, Lecce, Italy, 2010, 7 (1): 336-341.
  • 9GEIGER A, MOOSMANN F, CAR O, et al. Auto- matic camera and range sensor calibration using a sin- gle shot[ C ]. IEEE International Conference on Ro- botics and Automation, Saint Paul, MN, USA, 2012 : 3936-3943.
  • 10HUANG L, BARTH M. A novel multi-planar LIDAR and computer vision calibration procedure using 2D patterns for automated navigation [ C ]. IEEE Intelligent Vehicles Symposium, Xi'an, China, 2010:117-122.

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