DocumentCode :
3101973
Title :
Optimization of statistical learning algorithm for crop discrimination using remote sensing data
Author :
Khobragade, Anand ; Athawale, Priyanka ; Raguwanshi, Mukesh
fYear :
2015
fDate :
12-13 June 2015
Firstpage :
570
Lastpage :
574
Abstract :
Agriculture is backbone of Indian economy, where agricultural production is estimated based upon its sown area. The probable reasons for not having accurate and transparent statistics on Indian agronomy would be the existing inadequate facilities, unstable mechanism, and sluggish government functionaries. With the advent of remote sensing technologies, researchers are optimistic towards addressing such problems. It would be great challenge to classify multi-spectral satellite images due to its complexity, processing skills, and classification. The reviews on problems and prospects of supervised and unsupervised classification techniques, is highlighted in this paper. Literatures stated that one of such statistical learning model is support vector machine algorithm, which reveals to be the best suitable algorithm for vegetation discrimination using remote sensing images. In this paper, an attempt is made in order to enhance the performance of SVM by optimizing its training part. The approach aims at investigating improvement corners on SVM classification for estimating agricultural area using remote sensing data and explores futuristic research in this domain too. Several attempts have been made using supervised SVM model, but use of EA for enhancement of SVM is the novelty that distinguishes this research weigh against the traditional approaches. Findings of such intermingling is put forth through this approach in constructive way so as to address crop identification for reducing the manual efforts taken to measure the agricultural area covered by the specific crops.
Keywords :
crops; geophysical image processing; image classification; learning (artificial intelligence); optimisation; remote sensing; statistical analysis; support vector machines; Indian agronomy; Indian economy; SVM classification; agricultural area estimation; agricultural production; crop discrimination; multispectral satellite image classification; optimization; remote sensing data; remote sensing images; remote sensing technologies; sown area; statistical learning algorithm; statistical learning model; support vector machine algorithm; unsupervised classification techniques; vegetation discrimination; Accuracy; Agriculture; Classification algorithms; Remote sensing; Satellites; Support vector machines; Training; EA; GA; GIS; OSH; SMO; SVM; evolutionay algorithm; kappa; optimization; support vector machine;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Advance Computing Conference (IACC), 2015 IEEE International
Conference_Location :
Banglore
Print_ISBN :
978-1-4799-8046-8
Type :
conf
DOI :
10.1109/IADCC.2015.7154771
Filename :
7154771
Link To Document :
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