期刊論文

學年 110
學期 1
出版(發表)日期 2021-10-12
作品名稱 Design of Multi-Receptive Field Fusion-Based Network for Surface Defect Inspection on Hot-Rolled Steel Strip Using Lightweight Dataset
作品名稱(其他語言)
著者 Wei-Peng Tang; Sze-Teng Liong; Chih-Cheng Chen; Ming-Han Tsai; Ping-Cheng Hsieh; Yu-Ting Tsai; Shih-Hsin Chen; Kun-Ching Wang
單位
出版者
著錄名稱、卷期、頁數 Applied Sciences 11(20), p.9473
摘要 With the advancement of industrial intelligence, defect recognition has become an indispensable part of facilitating surface quality in the steel manufacturing process. To assure product quality, most previous studies were typically trained with many defect samples. Nonetheless, a large quantity of defect samples is difficult to obtain, owing to the rare occurrence of defects. In general, deep learning-based methods underperformed as they have inherent limitations due to inadequate information, thereby restraining the application of models. In this study, a two-level Gaussian pyramid is applied to decompose raw data into different resolution levels simultaneously filtering the noises to acquire compact and representative features. Subsequently, a multi-receptive field fusion-based network (MRFFN) is developed to learn the hierarchical features and synthesize the respective prediction scores to form the final recognition result. As a result, the proposed method is capable of exhibiting an outstanding performance of 99.75% when trained using a lightweight dataset. In addition, the experiments conducted using the disturbance defect dataset showed the robustness of the proposed MRFFN against common noises and motion blur.
關鍵字 automated surface inspection;convolutional neural network;multi-receptive field fusion network;lightweight dataset
語言 en
ISSN 2076-3417
期刊性質 國外
收錄於 SCI
產學合作
通訊作者
審稿制度
國別 CHE
公開徵稿
出版型式 ,電子版
相關連結

機構典藏連結 ( http://tkuir.lib.tku.edu.tw:8080/dspace/handle/987654321/121471 )