Using Deep Learning for Efficient Labeling of Bearing Images - Overcoming the Challenge of Limited Labeled Data Availability
Abstract
The development of complex deep learning models requires extensive labeled datasets,
which are scarce in specialized fields due to the labor-intensive and time consuming
nature of data labeling. This project aims to enhance the labeling process by using
initial labels generated by deep learning models, later refined by human experts, a
method commonly known as "Model Assisted Labeling". Collaborating with SKF,
the project focuses on assessing damaged bearing images for remanufacturing suitability,
particularly identifying specific failure modes. Given the abundance of raw,
unlabeled images and the limited high-quality labeled data, the proposed system
processes raw image data, providing preliminary labels for expert review. This system
also filters out irrelevant and duplicate images, optimizing the preprocessing
phase and saving both time and resources. Using techniques like transfer learning
and data augmentation, our system improves deep learning model performance and
generalization. The findings indicate that these techniques can effectively develop
high-performing models to aid in the labeling workflow.
Degree
Student essay
Collections
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Date
2024-10-16Author
Holmén, Noa
Nordkvist, Anton
Keywords
Applied Data Science
Deep Learning
Convolutional Neural Networks
Vision Transformers
Image Classification
Transfer Learning
Bearing Images