An unsupervised vector quantization-based target subspace projection approach to mixed pixel detection and classification in unknown background for remotely sensed imagery

Citation
C. Brumbley et Ci. Chang, An unsupervised vector quantization-based target subspace projection approach to mixed pixel detection and classification in unknown background for remotely sensed imagery, PATT RECOG, 32(7), 1999, pp. 1161-1174
Citations number
15
Categorie Soggetti
AI Robotics and Automatic Control
Journal title
PATTERN RECOGNITION
ISSN journal
00313203 → ACNP
Volume
32
Issue
7
Year of publication
1999
Pages
1161 - 1174
Database
ISI
SICI code
0031-3203(199907)32:7<1161:AUVQTS>2.0.ZU;2-C
Abstract
A recently developed orthogonal subspace projection (OSP) approach has been successfully applied to AVIRIS as well as HYDICE data for image classifica tion. However, it has found that OSP performs poorly in multispectral image classification such as 3-band SPOT data. This is primarily due to the fact that the number of signatures to be classified is greater than that of spe ctral bands used for data acquisition in which case the effects of unintere sted signatures cannot be properly annihilated via orthogonal projection. T his constraint, referred to as band number constraint (BNC) is generally no t applied to hyperspectral images because the number of signatures resident within the images is usually far less than the total number of spectral ba nds. In this paper, a new approach, called unsupervised vector quantization -based target subspace projection (UVQTSP) is presented which can be implem ented in an unknown environment with all required information obtained from the data to be processed. The proposed UVQTSP has practical advantages ove r OSP, specifically, it relaxes the band number constraint (BNC) so that it can be applied to multispectral imagery. The UVQTSP uses vector quantizati on to find a set of clusters representing the unknown signatures and interf erers which will be eliminated prior to target detection and classification . The number of clusters can be determined by constraints such as the intri nsic dimensionality or the number of spectral bands. This process is carrie d out in an unsupervised manner without training data. The superiority of U VQTSP is demonstrated through real data including SPOT and HYDICE images. ( C) 1999 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved.