Automatic Detection and Classification of Sewer Defects via Hierarchical Deep Learning

Video and image sources are frequently applied in the area of defect inspection in industrial community. For the recognition and classification of sewer defects, a significant number of videos and images of sewers are collected. These data are then checked by human and some traditional methods to re...

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Veröffentlicht in:IEEE transactions on automation science and engineering 2019-10, Vol.16 (4), p.1836-1847
Hauptverfasser: Xie, Qian, Li, Dawei, Xu, Jinxuan, Yu, Zhenghao, Wang, Jun
Format: Artikel
Sprache:eng
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Zusammenfassung:Video and image sources are frequently applied in the area of defect inspection in industrial community. For the recognition and classification of sewer defects, a significant number of videos and images of sewers are collected. These data are then checked by human and some traditional methods to recognize and classify the sewer defects, which is inefficient and error-prone. Previously developed features like SIFT are unable to comprehensively represent such defects. Therefore, feature representation is especially important for defect autoclassification. In this paper, we study the automatic extraction of feature representation for sewer defects via deep learning. Moreover, a complete automatic system for classifying sewer defects is proposed built on a two-level hierarchical deep convolutional neural network, which shows high performance with respect to classification accuracy. The proposed network is trained on a novel data set with over 40 000 sewer images. The system has been successfully applied in the practical production, confirming its robustness and feasibility to real-world applications. The source code and trained model are available at the project website. 1
ISSN:1545-5955
1558-3783
DOI:10.1109/TASE.2019.2900170