Reproduction of Remote Sensed Images Using Artificial Neural Network
Journal: International Journal of Science and Research (IJSR) (Vol.4, No. 6)Publication Date: 2015-06-05
Authors : Aarsi Saini; Sukhvinder Kaur;
Page : 3042-3047
Keywords : GIS Geographic Information System; LIDARlight detection and ranging; ANN Artificial Neural Network; MSE Mean Square Error; MATLAB Matrix Laboratory; SVM Support Vector Machines;
Abstract
Remote sensed images are reproduced using Artificial Neural Network. Elements of ANN perform similar to the functions of biological neuron. Once ANN learns it never forgets. Special feature of ANN is its capability of extracting correct result even from partially corrupt input. Different topologies of the earth surface are assigned with a digital code which is used as input to ANN and the location of image taken by satellite is used as target to train the ANN. Using the algorithm the trained ANN is used to reproduce the results.
Other Latest Articles
- External Locking Compression Plate for Open Fractures of Long Bones
- Microstructure and Roughness Analysis of Drum Brakes of Maruti 800
- Geological Mapping and Seismic Risk in the Eastern High Atlas: Case of Talsint Region (Morocco)
- Synthesis of MWCNT Functionalized SiO2 Thin Film for Biosensor Application
- Low Noise & High Speed Domino Logic Circuit
Last modified: 2021-06-30 21:49:27