dc.description.abstract |
The use of deep learning techniques to identify common leaf diseases in different crop
species is the main focus of this study, which makes use of a dataset of 10,000 unprocessed
mobile phone photos. The study encompasses a selection of plant species, namely Grape,
Lychee, Peach, Pepper, Strawberry, and Potato, each afflicted with prevalent illnesses such
as Grape esca, Lychee twig blight, Peach bacterial spot, Pepper bell bacterial spot, Potato
late blight, and Strawberry leaf scorch. The study employed three distinct CNN models.
Model 2 had suboptimal performance, while Models 1 and 3 demonstrated high levels of
accuracy. The accuracy rate of Model 3, specifically, was notable at 94%. The suggested
models were evaluated using a comprehensive dataset consisting of both healthy and
injured leaves. The experimental design employed in this study was the capturing of sound
and its subsequent impact on the leaves of specifically chosen trees, with the aim of
assessing its potential for practical implementation in real-world scenarios. The third
iteration of deep learning models demonstrates promise in achieving precise and efficient
identification of leaf diseases across diverse agricultural settings. These findings facilitate
the timely detection and management of plant diseases, hence enhancing crop yield and
promoting agricultural sustainability. |
en_US |