A comprehensive Malabar Spinach dataset for diseases classification
Mushfiqur Rahman, Md Al Mamun

TL;DR
This paper introduces a comprehensive dataset for detecting diseases in Malabar Spinach using machine vision to improve crop management and food security.
Contribution
The study presents a new dataset and evaluates deep learning models for disease detection in under-researched Malabar Spinach.
Findings
A dataset of healthy and diseased Malabar Spinach images was created for training and testing.
ResNet50 and other models achieved a target test accuracy of 94% for disease classification.
The results support precision farming and sustainable crop management for Malabar Spinach.
Abstract
This study focuses on the urgent need to increase detection of diseases in Malabar Spinach, a valuable leaf vegetable crop which is at risk from several disease types including Anthracous leaf spot and Straw mite infestation. There is still a lack of research focused on Malabar spinach, although advances in machine vision have considerably increased the detection of largescale crop diseases. By developing and evaluating machine vision algorithms specifically designed for accurate detection of diseases in Malabar spinach, this research aims to fill this gap. To achieve this, a comprehensive dataset comprising images of both healthy and diseased Malabar Spinach plants is utilized for training, testing, and validation purposes. This study seeks to develop reliable disease detection models through the examination of different image processing techniques and deep learning algorithms such as…
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Taxonomy
TopicsSmart Agriculture and AI · Vehicle License Plate Recognition · Digital Imaging for Blood Diseases
