Author:
Kusumawardani Rindi,Karningsih Putu Dana
Abstract
Packaging is one of the important aspects of a product’s identity. The good and adorable packaging can increase product competitiveness because it gives a perception to the customers of good quality products. Therefore, a good packaging display is necessary so that packaging quality inspection is very important. Automated defect detection can help to reduce human error in the inspection process. Convolutional Neural Network (CNN) is an approach that can be used to detect and classify a packaging condition. This paper presents an experiment that compares 5 network models, i.e. ShuffleNet, GoogLeNet, ResNet18, ResNet50, and Resnet101, each network given the same parameters. The dataset is an image of cans packaging which is divided into 3 classifications, No Defect, Minor Defect, and Major Defect. The experimental result shows that network architecture models of ResNet50 and ResNet101 provided the best result for cans defect classification than the other network models, with 95,56% for testing accuracy. The five models have the testing accuracy above 90%, so it can be concluded that all network models are ideal for detecting the packaging defect and defect classification for the cans product.
Publisher
Universitas Muhammadiyah Sidoarjo
Subject
General Materials Science
Reference15 articles.
1. Baudet, N., Maire, J.C., and Pillet, M., 2012. The Visual Inspection of Product Surface. Food Quality and Preference.
2. Ramos, M., Valdes, A., and Garrigos, M.A., 2016. Packaging for Drinks. Reference Modul in Food Science: Analytical Chemistry, Nutrition & Food Science. University of Alicante, Spain.
3. Rahman, N., Saad, N., Abdullah, A., and Ahmad, N.,2019. A Review of Vision Based Defect Detection using Image Processing Techniques for Beverages Manufacturing Industry. Journal of Technology.
4. [ ] Bratt, L., 2010. Fish Canning Handbook. Blackwell Publishing Ltd. United Kingdom.
5. Hajizadeh, S., Nunez, A.,and Tax, D.M., 2016. Semi-Supervised Rail Defect Detection from Imbalanced Image Data. IFAC-Papers online, 49 (3), 78-83
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
1. Convolutional Neural Network (CNN) of Resnet-50 with Inceptionv3 Architecture in Classification on X-Ray Image;Artificial Intelligence Application in Networks and Systems;2023
2. Canned Food Surface Defect Classification Using YOLOv4;2022 5th International Seminar on Research of Information Technology and Intelligent Systems (ISRITI);2022-12-08