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A Study of Image Processing in Agriculture


Affiliations
1 Department of Mathematics, BIT, Sathyamangalam, India
 

Agriculture is the backbone of human sustenance on this world. Now a days with growing population we need the productivity of the agriculture to be increased a lot to meet the demands. In olden days they used natural methods to increase the productivity, such as using the cow dung as a fertilizer in the fields. That resulted increase in the productivity enough to meet the requirements of the population. But later people started thinking of earning more profits by getting more outcome. So, there came a revolution called "Green Revolution". In this paper we implemented image processing using MATLAB to detect the weed areas in an image we took from the fields.

Keywords

Image Processing, Agriculture, Image Segmentation, Classification, Plant Diseases.
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  • A Study of Image Processing in Agriculture

Abstract Views: 248  |  PDF Views: 4

Authors

K. Prakash
Department of Mathematics, BIT, Sathyamangalam, India
P. Saravanamoorthi
Department of Mathematics, BIT, Sathyamangalam, India
R. Sathishkumar
Department of Mathematics, BIT, Sathyamangalam, India
M. Parimala
Department of Mathematics, BIT, Sathyamangalam, India

Abstract


Agriculture is the backbone of human sustenance on this world. Now a days with growing population we need the productivity of the agriculture to be increased a lot to meet the demands. In olden days they used natural methods to increase the productivity, such as using the cow dung as a fertilizer in the fields. That resulted increase in the productivity enough to meet the requirements of the population. But later people started thinking of earning more profits by getting more outcome. So, there came a revolution called "Green Revolution". In this paper we implemented image processing using MATLAB to detect the weed areas in an image we took from the fields.

Keywords


Image Processing, Agriculture, Image Segmentation, Classification, Plant Diseases.

References