Open Access Journal

ISSN : 2395-2717 (Online)

International Journal of Engineering Research in Computer Science and Engineering (IJERCSE)

Monthly Journal for Computer Science and Engineering

Open Access Journal

International Journal of Engineering Research in Electrical and Electronic Engineering(IJEREEE)

Monthly Journal for Electrical and Electronic Engineering

ISSN : 2395-2717 (Online)

Arecanut Segregation System Using Local Binary Pattern and HOG Features

Author : Asif Iqbal Mulla 1 Ayaz Sab 2 Abdullah Gubbi 3 Nithin 4

Date of Publication :31st January 2022

Abstract: Agriculture is, doubtlessly, one of the most relevant fields that drive Indian economy. India produces diverse types of spices and seeds depending upon the different soil and climate conditions. India is also one among the cultivator of arecanut and much of its production happens in the coastal region. It is a tropical crop. There is a variation in the quality of arecanut that makes it classified into various types. The arecanut classification and segregation is necessary, basically segregation is done manually which consumes much time, more effort and more error prone. This paper proposes an automatized approach of classification and segregation using hardware and digital image processing

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