Deep Learning For Image Classification Of Manufacturing Product
Abstract
Product inspection is essential for ensuring the quality and dependability of
manufactured goods. Traditional manual examination procedures are time consuming, subjective, and error prone. As manufacturing complexity and
production volumes increase, there is a rising need for automated inspection
systems with accurate defect detection and classification. This research presents
a deep learning-based quality inspection approach for submersible pump
impellers. Three convolutional neural network (CNN) architectures, VGG16,
ResNet50, and a custom model, are employed. A graphical user interface (GUI)
is developed for real-time inspection. The approach achieves up to 99.8%
accuracy in identifying defects, including surface scratches, corrosion, and
geometric irregularities. It improves the quality assurance process by reducing
manual inspection efforts. The GUI improves usability and decision-making. This
study contributes to industrial quality control by introducing a novel deep learning
application. Future research could explore advanced techniques like anomaly
detection to further enhance system performance and versatility. In future
research, improving the accuracy and applicability of quality inspection models
can be achieved by incorporating additional datasets and pre-trained models,
along with fine-tuning techniques. Moreover, developing hardware solutions for
real-time deployment in industrial processes will enable seamless integration.