Litcius/Paper detail

MangoLeafBD: A comprehensive image dataset to classify diseased and healthy mango leaves

Sarder Iftekhar Ahmed, Muhammad Ibrahim, Md. Nadim, Md. Mizanur Rahman, Maria Mehjabin Shejunti, Taskeed Jabid, Md Sawkat Ali

2023Data in Brief102 citationsDOIOpen Access PDF

Abstract

Agriculture is one of the few remaining sectors that is yet to receive proper attention from the machine learning community. The importance of datasets in the machine learning discipline cannot be overemphasized. The lack of standard and publicly available datasets related to agriculture impedes practitioners of this discipline to harness the full benefit of these powerful computational predictive tools and techniques. To improve this scenario, we develop, to the best of our knowledge, the first-ever standard, ready-to-use, and publicly available dataset of mango leaves. The images are collected from four mango orchards of Bangladesh, one of the top mango-growing countries of the world. The dataset contains 4000 images of about 1800 distinct leaves covering seven diseases. Although the dataset is developed using mango leaves of Bangladesh only, since we deal with diseases that are common across many countries, this dataset is likely to be applicable to identify mango diseases in other countries as well, thereby boosting mango yield. This dataset is expected to draw wide attention from machine learning researchers and practitioners in the field of automated agriculture.

Topics & Concepts

AgricultureMachine learningComputer scienceBoosting (machine learning)Field (mathematics)Artificial intelligenceYield (engineering)Data scienceGeographyMathematicsMaterials scienceArchaeologyPure mathematicsMetallurgySmart Agriculture and AIPhytoplasmas and Hemiptera pathogensPlant Pathogens and Fungal Diseases