Title :
Continuous Iterative Guided Spectral Class Rejection Classification Algorithm
Author :
Phillips, Rhonda D. ; Watson, Layne T. ; Wynne, Randolph H. ; Ramakrishnan, Naren
Author_Institution :
Lincoln Lab., Massachusetts Inst. of Technol., Lexington, MA, USA
fDate :
6/1/2012 12:00:00 AM
Abstract :
This paper presents a new semiautomated soft classification method that is a hybrid between supervised and unsupervised classification algorithms for the classification of remote sensing data. Continuous iterative guided spectral class rejection (IGSCR) (CIGSCR) is based on the IGSCR classification method, a crisp classification method that automatically locates spectral classes within information class training data using clustering. This paper outlines the model and algorithm changes necessary to convert IGSCR to use soft clustering to produce soft classification in CIGSCR. This new algorithm addresses specific challenges presented by remote sensing data including large data sets (millions of samples), relatively small training data sets, and difficulty in identifying spectral classes. CIGSCR has many advantages over IGSCR, such as the ability to produce soft classification, less sensitivity to certain input parameters, potential to correctly classify regions that are not amply represented in training data, and a better ability to locate clusters associated with all classes. Furthermore, evidence is presented that the semisupervised clustering in CIGSCR produces more accurate classifications than classification based on clustering without supervision.
Keywords :
geophysical techniques; iterative methods; remote sensing; IGSCR classification method; continuous iterative guided spectral class rejection; continuous iterative guided spectral class rejection classification algorithm; crisp classification method; information class training data; input parameters; remote sensing data; semiautomated soft classification method; semisupervised clustering; small training data sets; spectral classes; unsupervised classification algorithm; Clustering algorithms; Iterative methods; Prototypes; Random variables; Remote sensing; Training; Training data; Fuzzy clustering; land cover classification; partially supervised learning; remote sensing; soft clustering; statistical learning;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2011.2173802