TY - JOUR
T1 - Real-Time Defect Detection for Fast-Moving Fabrics on Circular Knitting Machine Under Various Illumination Conditions
AU - Ni, Yan Qin
AU - Huang, Pei Kai
AU - Yang, Ching Han
AU - Chang, Chin Chun
AU - Wang, Wei Jen
AU - Liang, Deron
N1 - Publisher Copyright:
© 2013 IEEE.
PY - 2025
Y1 - 2025
N2 - In industrial production, automated inspection methods for circular knitting machines often encounter several challenges. First, the rapid movement of fabrics on these machines makes it difficult for existing fabric defect detection methods to effectively capture and process the motion. Next, due to practical constraints aimed at maintaining high yield rates, collecting sufficient abnormal fabric samples for model training is costly and limited. Furthermore, circular knitting machines typically operate under varying illumination conditions, further complicating the task of accurate fabric defect detection. Additionally, these methods usually fail to identify the cutline patterns that are integral to the design of the fabric and mistake cutlines for v-line defects. Therefore, existing fabric defect detection methods often struggle to balance real-time processing, few-shot learning, and high accuracy under various illumination conditions To address the aforementioned challenges, we adopt a few-shot learning approach and propose a novel real-time fabric defect detection method for circular knitting machines, aiming to achieve high accuracy even under varying illumination conditions. The proposed mechanism consists of two components, the LBUnet and the false alarm filter for cutlines. First, to tackle the challenges of real-time detection, limited training data, and varying illumination conditions, we develop a lightweight semantic segmentation model, LBUnet, which leverages local binary (LB) convolution to effectively handle variable lighting conditions. Next, to address the specific challenge of detecting V-line defects, we propose a false-alarm filtering method that ensures accurate defect identification by utilizing time-series data composed of consecutive segmentation maps generated by LBUnet. Extensive experiments demonstrate that the proposed method delivers both high defect detection accuracy and real-time processing performance for fast-moving fabrics on circular knitting machines under diverse lighting conditions. Specifically, using only LBUnet, our approach achieved an average Mean Intersection over Union (mIoU) of 86.24% with an average processing time of just 4 milliseconds per image. When the false-alarm filtering component was incorporated, the system achieved 100% accuracy in detecting cutlines.
AB - In industrial production, automated inspection methods for circular knitting machines often encounter several challenges. First, the rapid movement of fabrics on these machines makes it difficult for existing fabric defect detection methods to effectively capture and process the motion. Next, due to practical constraints aimed at maintaining high yield rates, collecting sufficient abnormal fabric samples for model training is costly and limited. Furthermore, circular knitting machines typically operate under varying illumination conditions, further complicating the task of accurate fabric defect detection. Additionally, these methods usually fail to identify the cutline patterns that are integral to the design of the fabric and mistake cutlines for v-line defects. Therefore, existing fabric defect detection methods often struggle to balance real-time processing, few-shot learning, and high accuracy under various illumination conditions To address the aforementioned challenges, we adopt a few-shot learning approach and propose a novel real-time fabric defect detection method for circular knitting machines, aiming to achieve high accuracy even under varying illumination conditions. The proposed mechanism consists of two components, the LBUnet and the false alarm filter for cutlines. First, to tackle the challenges of real-time detection, limited training data, and varying illumination conditions, we develop a lightweight semantic segmentation model, LBUnet, which leverages local binary (LB) convolution to effectively handle variable lighting conditions. Next, to address the specific challenge of detecting V-line defects, we propose a false-alarm filtering method that ensures accurate defect identification by utilizing time-series data composed of consecutive segmentation maps generated by LBUnet. Extensive experiments demonstrate that the proposed method delivers both high defect detection accuracy and real-time processing performance for fast-moving fabrics on circular knitting machines under diverse lighting conditions. Specifically, using only LBUnet, our approach achieved an average Mean Intersection over Union (mIoU) of 86.24% with an average processing time of just 4 milliseconds per image. When the false-alarm filtering component was incorporated, the system achieved 100% accuracy in detecting cutlines.
KW - Fabric defect detection
KW - circular knitting
KW - few-shot learning
KW - local binary convolution
KW - real-time detection
KW - various illumination conditions
UR - https://www.scopus.com/pages/publications/105012442951
U2 - 10.1109/ACCESS.2025.3593335
DO - 10.1109/ACCESS.2025.3593335
M3 - 期刊論文
AN - SCOPUS:105012442951
SN - 2169-3536
VL - 13
SP - 139890
EP - 139903
JO - IEEE Access
JF - IEEE Access
ER -