Using Deep Transfer Learning for Unsupervised Image Segmentation in Remote Sensing
File(s)
Date
2022-04Author
Mohan, Pavithra Devy
DeWitte, Matthew
Advisor(s)
Rozario, Papia F.
Gomes, Rahul
Metadata
Show full item recordAbstract
As multispectral image resolution has increased, generating accurate segmentation of these images can pose a significant challenge. Furthermore, creating accurate labeled data requires hours of manual segmentation. One solution to this problem is the application of deep learning algorithms which can learn non-linear trends in the data without significant preprocessing and be used for transfer learning. In this research, we demonstrate transfer learning on how a model trained on one dataset can be used to segment a different dataset. Using the U-Net deep learning algorithm, we first train our model on a dataset with class labels. We then use the trained model to extend a custom U-Net structure to transfer semantic knowledge from the previous training and adapt to the unknown images. Preliminary results indicate that there is a potential to achieve higher accuracy by using optimized loss functions suited for unsupervised learning along with pre-trained weights from the trained U-Net model.
Subject
Machine learning
Remote sensing
Image processing
Posters
Department of Geography and Anthropology
Department of Computer Science
Permanent Link
http://digital.library.wisc.edu/1793/85007Type
Presentation
Description
Color poster with text, images, charts, photographs, and graphs.