Mahdi HATAMİ VARJOVİMuhammed Fatih TaluKazım Hanbay
Visual inspection is a main stage of quality assurance process in many applications. In this paper, we propose a new network architecture for detecting the fabric defects based on convolutional neural network. Four different pre-trained and customized model network architectures have compared in terms of performance. Results has been evaluated on a fabric defect dataset of 13.800 images. Among the existing Inception V3, MobileNetV2, Xception and ResNet50 methods, the InceptionV3 model has achieved 78% classification success. Our designed deep network model could achieve 97% success. The experimental works show that the designed deep model is effective in detecting the fabric defects.
Maheshwari BiradarB. G. ShiparamattiPradeep M. Patil
Junfeng JingHao MaHuanhuan Zhang
Eldho PaulK NivedhaM NivethikaV. PavithraG. Priyadharshini
Samit ChakrabortyMarguerite MooreLisa Parrillo‐Chapman
Junjun FanWai Keung WongJiajun WenCan GaoDongmei MoZhihui Lai