Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

A novel smartphone application for early detection of habanero disease

View through CrossRef
AbstractHabanero plant diseases can significantly reduce crop yield and quality, making early detection and treatment crucial for farmers. In this study, we discuss the creation of a modified VGG16 (MVGG16) Deep Transfer Learning (DTL) model-based smartphone app for identifying habanero plant diseases. With the help of the smartphone application, growers can quickly diagnose the health of a habanero plant by taking a photo of one of its leaves. We trained the DTL model on a dataset of labelled images of healthy and infected habanero plants and evaluated its performance on a separate test dataset. The MVGG16 DTL algorithm had an accuracy, precision, f1-score, recall and AUC of 98.79%, 97.93%, 98.44%, 98.95 and 98.63%, respectively, on the testing dataset. The MVGG16 DTL model was then integrated into a smartphone app that enables users to upload photographs, get diagnosed, and explore a history of earlier diagnoses. We tested the software on a collection of photos of habanero plant leaves and discovered that it was highly accurate at spotting infected plants. The smartphone software can boost early identification and treatment of habanero plant diseases, resulting in higher crop output and higher-quality harvests.
Title: A novel smartphone application for early detection of habanero disease
Description:
AbstractHabanero plant diseases can significantly reduce crop yield and quality, making early detection and treatment crucial for farmers.
In this study, we discuss the creation of a modified VGG16 (MVGG16) Deep Transfer Learning (DTL) model-based smartphone app for identifying habanero plant diseases.
With the help of the smartphone application, growers can quickly diagnose the health of a habanero plant by taking a photo of one of its leaves.
We trained the DTL model on a dataset of labelled images of healthy and infected habanero plants and evaluated its performance on a separate test dataset.
The MVGG16 DTL algorithm had an accuracy, precision, f1-score, recall and AUC of 98.
79%, 97.
93%, 98.
44%, 98.
95 and 98.
63%, respectively, on the testing dataset.
The MVGG16 DTL model was then integrated into a smartphone app that enables users to upload photographs, get diagnosed, and explore a history of earlier diagnoses.
We tested the software on a collection of photos of habanero plant leaves and discovered that it was highly accurate at spotting infected plants.
The smartphone software can boost early identification and treatment of habanero plant diseases, resulting in higher crop output and higher-quality harvests.

Related Results

Eficiencia de uso de nutrientes en ají tabasco (Capsicum frutescens L.) y habanero (Capsicum chínense Jacq)
Eficiencia de uso de nutrientes en ají tabasco (Capsicum frutescens L.) y habanero (Capsicum chínense Jacq)
<p>El manejo adecuado de la nutrición de un cultivo implica hacer un uso eficiente de los nutrientes. Por tanto, esta investigación tuvo como objetivo determinar la eficienci...
The Effects of Smartphone Use During Resistance Training
The Effects of Smartphone Use During Resistance Training
Several health risks are associated with sedentary behavior; therefore, it is important to better understand behaviors such as smartphone use and how it may influence physical acti...
Penentuan Strategi Bersaing pada Dua Brand Smartphone Menggunakan Teori Permainan
Penentuan Strategi Bersaing pada Dua Brand Smartphone Menggunakan Teori Permainan
Abstract. Smartphone competition in Indonesia, especially among students, is fiercely competitive. In choosing a smartphone, a lot of considerations are made by students. Each smar...
APAKAH PENUNDAAN WAKTU TIDUR DAPAT DISEBABKAN OLEH REGULASI DIRI DAN KECENDERUNGAN KECANDUAN SMARTPHONE? STUDI PADA PENGGUNA SMARTPHONE
APAKAH PENUNDAAN WAKTU TIDUR DAPAT DISEBABKAN OLEH REGULASI DIRI DAN KECENDERUNGAN KECANDUAN SMARTPHONE? STUDI PADA PENGGUNA SMARTPHONE
Latar Belakang: Penggunaan smartphone yang berlebihan mempunyai dampak negatif bagi penggunanya, salah satunya adalah pada penundaan waktu tidur atau bedtime procrastination. Indiv...
Smartphone Addiction among Nursing College Students in Kirkuk University
Smartphone Addiction among Nursing College Students in Kirkuk University
ABSTRACT Background: Today's smartphones have become like the shadow of life. Many of us cannot give up or reduce their use despite awareness of side effects of it.Aim of the study...

Back to Top