IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

CropVigil: Tomato Leaf Disease Detection Using Deep InfoMax Algorithm

CropVigil: Tomato Leaf Disease Detection Using Deep InfoMax Algorithm
View Sample PDF
Author(s): R. Deepa (SRM Institute of Science and Technology, India), V. Jayalakshmi (SRM Institute of Science and Technology, India), P. Thilakavathy (Vels Institute of Science, Technology, and Advanced Studies, India)and G. Manikandan (St. Joseph's College of Engineering, India)
Copyright: 2025
Pages: 18
Source title: Harnessing AI for Control Engineering
Source Author(s)/Editor(s): Mohamed Arezki Mellal (M'Hamed Bougara University, Algeria)
DOI: 10.4018/979-8-3693-7812-0.ch007

Purchase

View CropVigil: Tomato Leaf Disease Detection Using Deep InfoMax Algorithm on the publisher's website for pricing and purchasing information.

Abstract

Modern agricultural approaches classify and eradicate tomato-weakening pathogens using classification systems. To increase output and ensure farming's survival, these diseases must be appropriately diagnosed. The disease's multi-symptom nature, the need for vast amounts of annotated data, and real-time execution complicate this technique. Deep InfoMax algorithm (DIMA) improves disease classification with deep learning, this method retrieves lots of data by training a deep neural network on tomato leaves. The network correctly classifies tomato leaf images as disease kinds after training. This technology is versatile enough for disease diagnosis, crop management, and yield optimisation. Detecting and treating leaf diseases improves tomato productivity and health. The suggested method will be confirmed through simulation studies conducted on different images of tomato leaf diseases, the method will be validated in this way. The present study's overarching goal is to demonstrate how DIMA may dramatically improve agricultural disease management

Related Content

R. N. Ravikumar, S. Aarthi, Yulduz Urazbaeva, Zamira Atamuratova, Sadullayeva Moxinur, Jakhongir Shaturaev. © 2026. 32 pages.
Arjun Bali, Siddharth Kashiramka, Anshuman Guha, Prashant Gupta. © 2026. 30 pages.
Vishal Jain, Archan Mitra, Sanchita Paul. © 2026. 32 pages.
Krithikaa Venket. © 2026. 26 pages.
Nuraisa Novia Hidayati, Agung Santosa, Elvira Nurfadhilah, Andi Djalal Latief, Kokoy Siti Komariah, Asril Jarin, Siska Pebiana, Yuyun Wabula, Radhiyatul Fajri, Tri Sampurno. © 2026. 50 pages.
Piyush Amol Bhosale, Shravani Kulkarni, Amna Kausar, Aditya Shrivastav, Susanta Das. © 2026. 26 pages.
Vishal Jain, Archan Mitra. © 2026. 22 pages.
Body Bottom