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Reseach Article

BPNN Approach in Pixel Classification based Precision Segmentation for Agriculture Images

Published on February 2014 by Rajesh S. Sarkate, Khanale P. B., Thorat S. B.
National Conference on Recent Advances in Information Technology
Foundation of Computer Science USA
NCRAIT - Number 3
February 2014
Authors: Rajesh S. Sarkate, Khanale P. B., Thorat S. B.
47c0c26d-b97b-4014-9f6a-e3aef25d91be

Rajesh S. Sarkate, Khanale P. B., Thorat S. B. . BPNN Approach in Pixel Classification based Precision Segmentation for Agriculture Images. National Conference on Recent Advances in Information Technology. NCRAIT, 3 (February 2014), 25-27.

@article{
author = { Rajesh S. Sarkate, Khanale P. B., Thorat S. B. },
title = { BPNN Approach in Pixel Classification based Precision Segmentation for Agriculture Images },
journal = { National Conference on Recent Advances in Information Technology },
issue_date = { February 2014 },
volume = { NCRAIT },
number = { 3 },
month = { February },
year = { 2014 },
issn = 0975-8887,
pages = { 25-27 },
numpages = 3,
url = { /proceedings/ncrait/number3/15156-1423/ },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Proceeding Article
%1 National Conference on Recent Advances in Information Technology
%A Rajesh S. Sarkate
%A Khanale P. B.
%A Thorat S. B.
%T BPNN Approach in Pixel Classification based Precision Segmentation for Agriculture Images
%J National Conference on Recent Advances in Information Technology
%@ 0975-8887
%V NCRAIT
%N 3
%P 25-27
%D 2014
%I International Journal of Computer Applications
Abstract

Segmentation is a main process in the object recognition. Many times success of object recognition process depends on the precision of segmentation. The application of image processing technology, in the agricultural research, has made significant development [1]. With the advance processing capacity, soft computing and computer has attracted it as an alternative to human work [2]. In this paper, application of BPNN is plaid for segmenting gerbera flowers from offline Polyhouse images. Image segmentation is the foundation of many image analysis problems; any segmentation method with precision can positively influence the analysis process. [3] The agriculture images are subject to more complexes to process as they contain different size; shape objects and suffers from illumination, noise making segmentation more erroneous. The current study uses offline images captured from the natural scene of Polyhouse at arbitrary time. The flowers are segmented using Back propagation neural network. Total 30 images are used in the experiment where 10 images are used as training set and 20 images are used for testing data set. The input vector for the BPNN consist the color feature vector in form of R, G, B values extracted from every pixel, and BPNN classification divides the pixels into non flower pixel or flower pixel regions, giving segmentation.

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Index Terms

Computer Science
Information Sciences

Keywords

Bpnn Segmentation Precision Computer Vision Object Detection Gerbera Image Processing