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Main Authors: Hasan, Md. Mahmudul, Shaqib, SM, Akter, Ms. Sharmin, Alam, Rabiul, Haque, Afraz Ul, khushbu, Shahrun akter
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.07716
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author Hasan, Md. Mahmudul
Shaqib, SM
Akter, Ms. Sharmin
Alam, Rabiul
Haque, Afraz Ul
khushbu, Shahrun akter
author_facet Hasan, Md. Mahmudul
Shaqib, SM
Akter, Ms. Sharmin
Alam, Rabiul
Haque, Afraz Ul
khushbu, Shahrun akter
contents The purpose of the Insect Detection System for Crop and Plant Health is to keep an eye out for and identify insect infestations in farming areas. By utilizing cutting-edge technology like computer vision and machine learning, the system seeks to identify hazardous insects early and accurately. This would enable prompt response to save crops and maintain optimal plant health. The Method of this study includes Data Acquisition, Preprocessing, Data splitting, Model Implementation and Model evaluation. Different models like MobileNetV2, ResNet152V2, Xecption, Custom CNN was used in this study. In order to categorize insect photos, a Convolutional Neural Network (CNN) based on the ResNet152V2 architecture is constructed and evaluated in this work. Achieving 99% training accuracy and 97% testing accuracy, ResNet152V2 demonstrates superior performance among four implemented models. The results highlight its potential for real-world applications in insect classification and entomology studies, emphasizing efficiency and accuracy. To ensure food security and sustain agricultural output globally, finding insects is crucial. Cutting-edge technology, such as ResNet152V2 models, greatly influence automating and improving the accuracy of insect identification. Efficient insect detection not only minimizes crop losses but also enhances agricultural productivity, contributing to sustainable food production. This underscores the pivotal role of technology in addressing challenges related to global food security.
format Preprint
id arxiv_https___arxiv_org_abs_2406_07716
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Unleashing the Power of Transfer Learning Model for Sophisticated Insect Detection: Revolutionizing Insect Classification
Hasan, Md. Mahmudul
Shaqib, SM
Akter, Ms. Sharmin
Alam, Rabiul
Haque, Afraz Ul
khushbu, Shahrun akter
Computer Vision and Pattern Recognition
The purpose of the Insect Detection System for Crop and Plant Health is to keep an eye out for and identify insect infestations in farming areas. By utilizing cutting-edge technology like computer vision and machine learning, the system seeks to identify hazardous insects early and accurately. This would enable prompt response to save crops and maintain optimal plant health. The Method of this study includes Data Acquisition, Preprocessing, Data splitting, Model Implementation and Model evaluation. Different models like MobileNetV2, ResNet152V2, Xecption, Custom CNN was used in this study. In order to categorize insect photos, a Convolutional Neural Network (CNN) based on the ResNet152V2 architecture is constructed and evaluated in this work. Achieving 99% training accuracy and 97% testing accuracy, ResNet152V2 demonstrates superior performance among four implemented models. The results highlight its potential for real-world applications in insect classification and entomology studies, emphasizing efficiency and accuracy. To ensure food security and sustain agricultural output globally, finding insects is crucial. Cutting-edge technology, such as ResNet152V2 models, greatly influence automating and improving the accuracy of insect identification. Efficient insect detection not only minimizes crop losses but also enhances agricultural productivity, contributing to sustainable food production. This underscores the pivotal role of technology in addressing challenges related to global food security.
title Unleashing the Power of Transfer Learning Model for Sophisticated Insect Detection: Revolutionizing Insect Classification
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2406.07716