期刊文献+

Robust water hazard detection for autonomous off-road navigation 被引量:1

Robust water hazard detection for autonomous off-road navigation
原文传递
导出
摘要 Existing water hazard detection methods usually fail when the features of water surfaces are greatly changed by the surroundings, e.g., by a change in illumination. This paper proposes a novel algorithm to robustly detect different kinds of water hazards for autonomous navigation. Our algorithm combines traditional machine learning and image segmentation and uses only digital cameras, which are usually affordable, as the visual sensors. Active learning is used for automatically dealing with problems caused by the selection, labeling and classification of large numbers of training sets. Mean-shift based image segmentation is used to refine the final classification. Our experimental results show that our new algorithm can accurately detect not only ‘common’ water hazards, which usually have the features of both high brightness and low texture, but also ‘special’ water hazards that may have lots of ripples or low brightness. Existing water hazard detection methods usually fail when the features of water surfaces are greatly changed by the surroundings, e.g., by a change in illumination. This paper proposes a novel algorithm to robustly detect different kinds of water hazards for autonomous navigation. Our algorithm combines traditional machine learning and image segmentation and uses only digital cameras, which are usually affordable, as the visual sensors. Active learning is used for automatically dealing with prob- lems caused by the selection, labeling and classification of large numbers of training sets. Mean-shift based image segmentation is used to refine the final classification. Our experimental results show that our new algorithm can accurately detect not only 'common' water hazards, which usually have the features of both high brightness and low texture, but also 'special' water hazards that may have lots of ripples or low brightness.
出处 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2009年第6期786-793,共8页 浙江大学学报(英文版)A辑(应用物理与工程)
基金 Project supported by the National Natural Science Foundation of China (Nos. 60505017 and 60534070) the Natural Science Foundation of Zhejiang Province, China (No. 2005C14008)
关键词 自主导航 水害 探测 危险 鲁棒 图像分割 机器学习 视觉传感器 Water hazard detection, Active leaming, Adaboost, Mean-shift
  • 相关文献

参考文献10

  • 1Dima,C.Classifier Fusion for Outdoor Obstacle De-tection[].IEEE Int Conf on Robotics and Automation.2004
  • 2Dima, C.,Hebert, M.,Stentz, A.Enabling Learning from Large Datasets: Applying Active Learning to Mo-bile Robotics[].Proc Int Conf on Robotics and Automa-tion.2004
  • 3Forsyth, D.,Ponce, J.Computer Vision: A ModernApproach. Professional Technical Reference[]..2002
  • 4Gray, A.G.,Moore, A.W.Rapid Evaluation of Multiple Density Models[].Proc th Int Workshop on Artificial Intelligence and Statistics.2003
  • 5Scholz, M.,Vigario, R.Nonlinear PCA: A New Hier-archical Approach[].Proc European Symp on Artificial Neural Networks.2002
  • 6Wald, I.,Havran, V.On Building Fast kd-trees for Ray Tracing, and on Doing That in O(NlogN)[].IEEE Symp on Interactive Ray Tracing.2006
  • 7Yao, T.Z.,Xiang, Z.Y.,Liu, J.L.,Xu, D.Multi-feature Fusion Based Outdoor Water Hazards Detection[].Proc IEEE Conf on Mechatronics and Automation.2007
  • 8Comaniciu D,Meer P.Mean shift: a robust approach toward feature space analysis[].IEEE Transactions on Pattern Analysis and Machine Intelligence.2002
  • 9DIMA C.Active learning for outdoor perception[]..2001
  • 10HONG T,CHANG T,RASMUSSEN C,et al.Featuredetection and tracking for mobile robots using a combi-nation of LADAR and color images[].EEE Pro-ceedings On Robotics and Automation.2002

同被引文献1

引证文献1

二级引证文献1

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部