期刊文献+

子块鉴别分析的路面裂缝检测 被引量:10

Pavement crack detection algorithm based on sub-patch discriminant analysis
原文传递
导出
摘要 目的路面图像受光照、行道线和油渍等干扰使得准确的提取并统计路面裂缝信息难以实现。鉴于此,提出一种基于子块鉴别分析的路面裂缝检测算法。方法首先提出一种基于亮度补偿的灰度校正算法用以削弱光照等影响并结合稀疏自编码模型提取子块特征;然后在鉴别分析基础上提出两类迭代鉴别分析降维算法,通过循环更新子类类间距离,使得裂缝子块投影和聚类交替执行直至满足收敛条件从而获得更具有鉴别能力的低维子空间;最后对投影后的子块采用最近邻分类器进行快速分类。结果迭代过程中裂缝子块聚类结果逐渐趋向于低维子空间下的真实样本分布形态、子空间鉴别能力大幅提升。公开数据集上该算法取得95.5%的识别率,在实际采集的高速公路数据库上也取得90.9%的识别率,验证了本文算法的有效性。结论提出了一种高效的基于鉴别分析的子块特征识别算法用于路面裂缝检测,在深度挖掘裂缝子块特征的基础上,迭代寻找最优低维鉴别子空间实现特征降维,在包含多种噪声的路面环境中具有良好的鲁棒性和适应性。多组对比实验结果表明其有效性优于其他裂缝子块特征识别方法。 Objective How to extract and collect crack information efficiently and effectively still remains a challenging task due to illumination, lane and stains over the pavement images. In this paper, based on the sub-patch discriminant analysis, we propose a novel pavement crack detection method to address the foregoing problem. Method First, an intensity compensa- tion based grayseale correction algorithm is presented to weaken uneven illumination, then the sparse autoencoder model is ap- plied to extract sub-patch features. Second, in order to extract more discriminative features, a new two class iterative discrimi- nant analysis is further proposed, where the projection and clustering processing steps are alternatively performed to update the inter-distance of different sub-classes of all crack patches until convergence. Finally, the nearest neighbor classifier is adopted in the discriminative subspace for classification tasks. Result As the distribution of samples in the transformed subspace ap- proaches to the true one via the iterative process, discrimination of features can be enhanced significantly. A series of experi-ments show that the proposed method achieves high recognition rates, i. e. , up to 95.5% on the benchmark dataset, 90. 9% on a practical highway dataset. Conclusion A sub-patch discriminant analysis based method is developed for effective crack detection. Our method aims to extract highly discriminative features for sub-patches of road images. Three main steps, i. e. , grayscale correction, sparse autoencoding, iterative discriminant feature extraction are involved, making our method highly ro- bust and adaptive to the road images with several kinds of heavy noises. The final classification is performed in the obtained low dimensional subspace. Extensive experimental results on two datasets demonstrate that our proposed method generally out- performs other existing related algorithms.
出处 《中国图象图形学报》 CSCD 北大核心 2015年第12期1652-1663,共12页 Journal of Image and Graphics
基金 国家自然科学基金重点项目(90820306) 国家自然科学基金项目(61305134)~~
关键词 裂缝检测 鉴别分析 灰度校正 稀疏自编码 crack detection discriminant analysis grayscale correction sparse autoencoder
  • 相关文献

参考文献24

  • 1Cheng H D, Miyojim M. Automatic pavement distress detection system[ J ]. Journal of Information Science, 199g, 108 ( 1-4 ) : 219-240.
  • 2闫茂德,伯绍波,贺昱曜.一种基于形态学的路面裂缝图像检测与分析方法[J].工程图学学报,2008,29(2):142-147. 被引量:29
  • 3Li Q Q, Liu X L. Novel approach to pavement image segmenta- tion based on neighboring difference histogram method [ C ]//Pro- ceeding of International Conference on Image and Signal Process- ing. Sanya, China:IEEE, 2008:792-796.
  • 4马常霞,赵春霞,狄峰,李旻先.自然环境下路面裂缝的识别[J].工程图学学报,2011,32(4):20-26. 被引量:11
  • 5徐威,唐振民,徐丹,吴国星.融合多特征与格式塔理论的路面裂缝检测[J].计算机辅助设计与图形学学报,2015,27(1):147-156. 被引量:17
  • 6Fereidoon M N, Hamzeh Z. An optimum feature extraction meth- od based on wavelet-radon transform and dynamic neural network for pavement distress classification[J]. Expert Systems with Ap- plications, 2011, 38(8):9442-9460.
  • 7马常霞,赵春霞,胡勇,王鸿南,陈海燕.结合NSCT和图像形态学的路面裂缝检测[J].计算机辅助设计与图形学学报,2009,21(12):1761-1767. 被引量:45
  • 8Fujita Y, Hamamoto Y. A robust automatic crack detection meth- od from noisy concrete surfaces [ J ]. Machine Vision and Appli- cations, 2011,22(2) :245-254.
  • 9Xu W, Tang Z M, Zbou J, et al. Pavement crack detection based on saliency and statistical features [ C]//Proceeding of In- ternational Conference on Image Processing. Melbourne: IEEE, 2013:4093-4097.
  • 10徐威,唐振民,吕建勇.基于图像显著性的路面裂缝检测[J].中国图象图形学报,2013,18(1):69-77. 被引量:45

二级参考文献68

  • 1焦李成,谭山.图像的多尺度几何分析:回顾和展望[J].电子学报,2003,31(z1):1975-1981. 被引量:227
  • 2高建贞,陆建峰,赵春霞,唐振民,杨静宇.基于多级拟合的道路病害自动检测与识别[J].计算机工程与应用,2004,40(22):220-223. 被引量:5
  • 3张洪光,王祁,魏玮.基于人工种群的路面裂纹检测[J].南京理工大学学报,2005,29(4):389-393. 被引量:10
  • 4王刚,贺安之,肖亮.基于高速公路裂纹局部线性特征内容的脊波变换域算法研究[J].光学学报,2006,26(3):341-346. 被引量:11
  • 5Kelvin C P Wang,Hui Zhang. An internet-based multimedia highway information system. Computer-Aided Civil and Infrastructure Engineering, 2000,15 (1):393~404
  • 6潘玉利.路面管理系统原理.北京:人民交通出版社,1998.21-34
  • 7Cheng H D,Miyojim M. Novel system for automatic pavement distress detection. Journal of Computer in Civil Engineering, 1998(7): 145~152
  • 8Pynn J, Wright A, Lodge R. Automatic identification of cracks in road surfaces [C] //Proceedings of the 7th IEEE International Conference on Image Processing and its Applications, Manchester, 1999:671-675.
  • 9Bray J, Verma B, Li X, et al. A neural network based technique for automatic classification of road cracks [C] // Proceedings of International Joint Conference on Neural Networks, Vancouver, 2006:907-912.
  • 10Burt P J, Adelson E H. The Laplacian pyramid as a compact image code [J]. IEEE Transactions on Communications, 1983, 31(4): 532-540.

共引文献127

同被引文献92

引证文献10

二级引证文献73

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