A simple cleaning procedure for improvement of training site statistics

Autor: Gurinder Gill, Gurjtt Gill
Rok vydání: 1994
Předmět:
Zdroj: Journal of the Indian Society of Remote Sensing. 22:87-92
ISSN: 0974-3006
0255-660X
Popis: For improving the effectiveness of supervised training, a simple cleaning procedure which operates by selectively dropping training site pixels based on the Mahalanobis distance and class probability has been proposed. The method is iterative and takes into account the spectral overlap in all image bands with all the user specified classes. The procedure results in greater classification accuracy with narrower confidence interval. On the test data, Bhattacharrya distance measure of class separability unproved front an average value of 1.9373 to 1.9797 with a maximum change for a class pair from 1.2671 to 1.9052. The overall classification accuracy increased from 94.74 ±0.64 to 99.63 ± 0.19.
Databáze: OpenAIRE