Breadcrumb
- Home
- Publications
- Proceedings
- 12th Southwest Process Technology Conference
- Southwest Process Technology Conference
- IIoT/Big Data
- (9a) Image Classification to Automate at-Line Pellet Inspection in Plastics Production
In order to automate this classification, a multi-class classifier was built with a convolutional neural network (CNN). The network layers will automatically learn complicated features from raw images compared to traditional machine learning methods, which require well-defined features based on domain knowledge about the output class. A selection of well-established CNN model structures (i.e. VGG16, ResNet50, etc.) were tested with and without image augmentation and model accuracy evaluated. The best performing model achieves greater than 95% accuracy for all output classes. This is a successful application of deep learning techniques to directly improve manufacturing efficiency and the model is in use for daily decision making.