A Neural Net Classifier for Multi-Temporal LANDSAT TM Images
スポンサーリンク
概要
- 論文の詳細を見る
The classification of remotely sensed multispectral data using classical statistical methods has been worked on for several decades. Recently there have been many new developments in neural network (NN) research, and many new applications have been studied. It is well known that NN approaches have the ability to classify without assuming a distribution. We have proposed an NN model to combine the spectral and spacial information of a LANDSAT TM image. In this paper, we apply the NN approach with a normalization method to classify multi-temporal LANDSAT TM images in order to investigate the robustness of our approach. From our experiments, we have confirmed that our approach is more effective for the classification of multi-temporal data than the original NN approach and maximum likelihood approach.
- 社団法人電子情報通信学会の論文
- 1995-10-25
著者
-
Kamata Sei-ichiro
Faculty Of Engineering Kyushu Institute Of Technology
-
Kawaguchi Eiji
Faculty Of Engineering Kyushu Institute Of Technology
-
Kamata S
Kyushu Inst. Technol. Kitakyushu Jpn
関連論文
- A Neural Net Classifier for Multi-Temporal LANDSAT TM Images
- An Implementation of the Hilbert Scanning Algorithm and Its Application to Data Compression (Special Issue on Image Processing and Understanding)
- A Method of Making Lookup Tables for Hilbert Scans