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Deep-learning-based anomaly detection for lace defect inspection employing videos in production line
Affiliation:1. College of Science, North China University of Science and Technology, Tangshan 063210, PR China;2. Hebei Key Laboratory of Data Science and Applications, North China University of Science and Technology, Tangshan, Hebei 063210, PR China;1. National Engineering Research Center for Advanced Rolling and Intelligent Manufacturing, University of Science and Technology Beijing, Beijing 100083, China;2. Department of Electronics and Electrical Engineering, Liverpool John Moores University, Liverpool L3 3AF, U.K;3. The State Key Laboratory of Digital Manufacturing Equipment and Technology, Huazhong University of Science and Technology, Wuhan 430074, China;1. College of Management, Shenzhen University, Shenzheng 518073, China;2. Commercial College, Xi’an International University, Xi’an 710077, China;3. CCCC Third Harbor Consultants Co., Ltd., Shanghai 200032, China;4. Institute of Transportation Studies, University of California Davis, Davis, CA 95616, USA
Abstract:Defect inspection plays an essential role in ensuring quality of industrial products. The most widely used human visual inspection method has some drawbacks such as high cost and low efficiency, which bring an eager demand for the application of automatic defect inspection algorithm in actual production. However, few industrial production lines use automatic detection devices due to the gap between data collected in the actual production environment and ready-made datasets. Lace is one of the industrial products which completely depends on manual defect inspection. The complex and fine texture of lace makes it difficult to extract regular patterns using the existing image-based defect inspection methods. In this paper, we propose to collect lace videos in the weaving stage and design a deep-learning-based anomaly detection framework to detect lace defects. The framework contains three stages, namely video pre-processing stage, pixel reconstruction stage and pixel classification stage. In the offline phase, only defect-free lace videos are needed to train the pixel reconstruction model and calculate the detection threshold by our adaptive thresholding method. In the online phase, the proposed framework reconstructs lace videos and performs defect inspection using reconstruction error and the pre-set threshold. As far as we know, this paper the first to detect fabric defects by videos. Experimental results on artificial defect videos demonstrate the effectiveness of the proposed framework.
Keywords:Deep learning  Anomaly detection  Gated Recurrent Unit (GRU)  Attention  Lace defect inspection  Engineering applications
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