A Citrus Fruits and Leaves Dataset for Detection and Classification of Citrus Diseases through Machine Learning

Main Author: Rauf, Hafiz Tayyab
Other Authors: Saleem, Basharat ALi , Lali, M. Ikram Ullah , Khan, Muhammad Attique , Sharif, Muhammad , Bukhari, Syed Ahmad Chan
Format: Dataset
Terbitan: Mendeley , 2019
Subjects:
Online Access: https:/data.mendeley.com/datasets/3f83gxmv57
ctrlnum 0.17632-3f83gxmv57.2
fullrecord <?xml version="1.0"?> <dc><creator>Rauf, Hafiz Tayyab</creator><title>A Citrus Fruits and Leaves Dataset for Detection and Classification of Citrus Diseases through Machine Learning</title><publisher>Mendeley</publisher><description>(1) In agriculture, plant diseases are primarily responsible for the reduction in production which causes economic losses. In plants, citrus is used as a major source of nutrients like vitamin C throughout the world. However, &#x2018;Citrus&#x2019; diseases badly effect the production and quality of citrus fruits. (2) The computer vision and image processing techniques have been widely used for detection and classification of diseases in plants. (3) The dataset contains an image gallery of healthy and unhealthy citrus fruits and leaves that could be usable for the researchers to prevent plants from diseases using advanced computer vision techniques. The disease targeted in the data sets are the Blackspot, Canker, Scab, Greening, and Melanose. (4) The dataset contains 759 images of healthy and unhealthy images for both Citrus fruits and leaves collectively. Each image contains 256 * 25 dimensions with 72 dpi resolution. (5) All images were acquired from the Sargodha region, a tropical area of Pakistan under the supervision of Dr. Basharat ALi Saleem, Endeavour Executive Fellow Curtin University &#xB7; Horticulture Research Laboratory Postharvest Australia &#xB7; Bentley (6) All images were annotated manually by the domain expert Dr. Basharat ALi Saleem to represent their every class such as : For Citrus fruits (Black Spot, Canker, Greening, Scab, and healthy with total number of 150 images ), For Citrus Leaves (Black Spot, Canker, Greening, Melanose, and healthy with total number of 609 image) (6) Further details can be found in the associated publications with the dataset.</description><subject>Computer Vision</subject><subject>Image Processing</subject><subject>Image Classification Techniques</subject><subject>Plant Diseases</subject><contributor>Saleem, Basharat ALi </contributor><contributor>Lali, M. Ikram Ullah </contributor><contributor>Khan, Muhammad Attique </contributor><contributor>Sharif, Muhammad </contributor><contributor>Bukhari, Syed Ahmad Chan </contributor><type>Other:Dataset</type><identifier>10.17632/3f83gxmv57.2</identifier><rights>Creative Commons Attribution 4.0 International</rights><rights>http://creativecommons.org/licenses/by/4.0</rights><relation>https:/data.mendeley.com/datasets/3f83gxmv57</relation><date>2019-05-28T23:32:44Z</date><recordID>0.17632-3f83gxmv57.2</recordID></dc>
format Other:Dataset
Other
author Rauf, Hafiz Tayyab
author2 Saleem, Basharat ALi
Lali, M. Ikram Ullah
Khan, Muhammad Attique
Sharif, Muhammad
Bukhari, Syed Ahmad Chan
title A Citrus Fruits and Leaves Dataset for Detection and Classification of Citrus Diseases through Machine Learning
publisher Mendeley
publishDate 2019
topic Computer Vision
Image Processing
Image Classification Techniques
Plant Diseases
url https:/data.mendeley.com/datasets/3f83gxmv57
contents (1) In agriculture, plant diseases are primarily responsible for the reduction in production which causes economic losses. In plants, citrus is used as a major source of nutrients like vitamin C throughout the world. However, ‘Citrus’ diseases badly effect the production and quality of citrus fruits. (2) The computer vision and image processing techniques have been widely used for detection and classification of diseases in plants. (3) The dataset contains an image gallery of healthy and unhealthy citrus fruits and leaves that could be usable for the researchers to prevent plants from diseases using advanced computer vision techniques. The disease targeted in the data sets are the Blackspot, Canker, Scab, Greening, and Melanose. (4) The dataset contains 759 images of healthy and unhealthy images for both Citrus fruits and leaves collectively. Each image contains 256 * 25 dimensions with 72 dpi resolution. (5) All images were acquired from the Sargodha region, a tropical area of Pakistan under the supervision of Dr. Basharat ALi Saleem, Endeavour Executive Fellow Curtin University · Horticulture Research Laboratory Postharvest Australia · Bentley (6) All images were annotated manually by the domain expert Dr. Basharat ALi Saleem to represent their every class such as : For Citrus fruits (Black Spot, Canker, Greening, Scab, and healthy with total number of 150 images ), For Citrus Leaves (Black Spot, Canker, Greening, Melanose, and healthy with total number of 609 image) (6) Further details can be found in the associated publications with the dataset.
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