학술논문

Z-Score distance: A spectral matching technique for automatic class labelling in unsupervised classification
Document Type
Conference
Source
2014 IEEE Geoscience and Remote Sensing Symposium Geoscience and Remote Sensing Symposium (IGARSS), 2014 IEEE International. :1793-1796 Jul, 2014
Subject
Geoscience
Accuracy
Labeling
Satellites
Agriculture
Earth
Hyperspectral imaging
unsupervised classification
class labelling
spectral library
automation
Language
ISSN
2153-6996
2153-7003
Abstract
The paper presents a post-classification tool that automatically labels classes in classified imagery by matching their spectral characteristics to reference spectra. Unlike the Spectral Angle Mapper (SAM) and other spectral matching classifiers, it labels clusters of pixels rather than individual pixels. This new method can be used to label or re-label classes generated by any existing classifier, either supervised or unsupervised. In other words, it can be used in conjunction with existing classification approaches or as a part of an ensemble classifier. A Landsat 5 TM image of an agricultural area was used for performance assessment. The spectral signatures (reference spectra) were extracted from a hyperspectral Hyperion data set. The technique produced a map of higher accuracy (51%) in comparison to maps produced by manual class labeling (40% to 45% accuracy, depending on the analyst); it also outperformed the SAM classifier (39%), but underperformed in comparison to the Maximum Likelihood classification (53% to 63% depending on the analyst).