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A smart agriculturing IoT system for banana plants disease detection through inbuilt compressed sensing devices

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Title A smart agriculturing IoT system for banana plants disease detection through inbuilt compressed sensing devices
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Creator Aasha Nandhini.S, Hemalatha.R, Radha.S, Shreya Gaur, Selvarajan.R
 
Subject Banana, Compressed sensing, plant diseases, detections, ORB features, Support Vector Machine, bunchy top disease, sigatoka leaf spot disease
 
Description Not Available
The Internet of Things (IoT) solutions for agriculture are rapidly growing and have the potential to transform agriculture in many aspects. In particular, the plant disease detection devices play a vital role in improving the agriculture. The visual monitoring of plants for the onset of diseases is a tedious and time-consuming task for farmers and at the same time it is less accurate. Hence an automated system with environmental data and
camera sensors can serve as an alternative and effective solution for manual monitoring of plants.In this paper, a novel and efficient compressed sensing inbuilt plant disease detection device is developed which uses a foreground-based segmentation method and two step feature extraction technique to detect and classify two of the major banana diseases. A database is created for banana bunchy top and sigatokaleaf spot diseases
by collecting images in real time from the fields of southern parts of Tamilnadu namely Thadiyankudisai and Thandikudi of Dindigul district, KC Patti, Muthalapuram, Suruli Patti and Kambam of Theni district and ICAR NRCB, Tiruchirapalli. The suggested device's effectiveness has been assessed in terms of the proportion of
infected areas, detection accuracy, percentage of feature reduction, and classification accuracy. The
prototype of the proposed device is developed and validated using the Raspberry pi board. The
findings demonstrate that the suggested device achieves classification accuracy of 97.33% and
detection accuracy of 96.75%.
Not Available
 
Date 2023-05-03T09:31:44Z
2023-05-03T09:31:44Z
2022-11-11
 
Type Research Paper
 
Identifier Not Available
Not Available
http://krishi.icar.gov.in/jspui/handle/123456789/76965
 
Language English
 
Relation Not Available;
 
Publisher Not Available