Unsupervised feature extraction of aerial images for clustering and understanding hazardous road segments
Aerial image data are becoming more widely available, and analysis techniques based on supervised learning are advancing their use in a wide variety of remote sensing contexts. However, supervised learning requires training datasets which are not always available or easy to construct with aerial ima...
Main Authors: | Francis, J, Bright, J, Esnaashari, S, Hashem, Y, Morgan, D, Straub, VJ |
---|---|
Formato: | Journal article |
Idioma: | English |
Publicado em: |
Springer Nature
2023
|
Registos relacionados
-
A multidomain relational framework to guide institutional AI research and adoption
Por: Straub, VJ, et al.
Publicado em: (2023) -
Unsupervised action segmentation in videos with clustering algorithms
Por: Lim, Isaac Sheng Yang
Publicado em: (2024) -
Unsupervised image segmentation using robust clustering
Por: Pan, Hong
Publicado em: (2008) -
Invariant information clustering for unsupervised image classification and segmentation
Por: Ji, X, et al.
Publicado em: (2020) -
Tissue segmentation and classification using graph-based unsupervised clustering
Por: Margolis, D, et al.
Publicado em: (2012)