Pest detection system using machine learning techniques
Abstract
Countries like Bangladesh yield a significant portion of their economy from their
agricultural sector. Agricultural pests, on the other hand, have a significant impact
on both agricultural production and crop storage. The pest category must be precisely
identified, and specific management actions must be adopted as a prevention
technique against these pests. As a result, a computer vision-based agricultural
pest recognition system must be developed. The implications of certain prospective
machine learning algorithms, like Support Vector Machine, Inceptionv3, and
Xception, are discussed in this research to achieve insect detection with the complicated
agriculture setting. In this study, the dataset used are images of mainly 5
common pests found in a paddy field in Bangladesh. The results achieved from the
models were studied based on their accuracy and loss percentage to determine the
better approach for such detection to take necessary actions. In this research, SVM
outperformed both InceptionV3 and Xception with an accuracy of about 72.5%.