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Diagnosis of sewer pipe defects on image recognition of multi-features and support vector machine in a southern Chinese city 被引量:4
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作者 Xiangyang Ye Jian’e Zuo +4 位作者 Ruohan Li Yajiao Wang Lili Gan zhonghan yu Xiaoqing Hu 《Frontiers of Environmental Science & Engineering》 SCIE EI CAS CSCD 2019年第2期29-41,共13页
Closed circuit television(CCTV)systems are widely used to inspect sewer pipe conditions.During the diagnosis process,the manual diagnosis of defects is time consuming,labor intensive and error prone.To assist inspecto... Closed circuit television(CCTV)systems are widely used to inspect sewer pipe conditions.During the diagnosis process,the manual diagnosis of defects is time consuming,labor intensive and error prone.To assist inspectors in diagnosing sewer pipe defects on CCTV inspection images,this paper presents an image recognition algorithm that applies features extraction and machine learning approaches.An algorithm of image recognition techniques,including Hu invariant moment,texture features,lateral Fourier transform and Daubechies(DBn)wavelet transform,was used to describe the features of defects,and support vector machines were used to classify sewer pipe defects.According to the inspection results,seven defects were defined;the diagnostic system was applied to a sewer pipe system in a southern city of China,and 28,760 m of sewer pipes were inspected.The results revealed that the classification accuracies of the different defects ranged from 51.6% to 99.3%.The overall accuracy reached 84.1%.The diagnosing accuracy depended on the number of the training samples,and four fitting curves were applied to fit the data.According to this paper,the logarithmic fitting curve presents the highest coefficient of determination of 0.882,and more than 200 images need to be used for training samples to guarantee the accuracy higher than 85%. 展开更多
关键词 SEWER PIPE DEFECTS DEFECT diagnosing Image recognition Multi-features extraction Support vector machine
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