An Algorithm for Detection and Identification of Infestation Density of Pest-Fall Armyworm in Maize Plants using Deep Learning based on IoT

An Algorithm for Detection and Identification of Infestation Density of Pest-Fall Armyworm in Maize Plants using Deep Learning based on IoT

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© 2022 by IJETT Journal
Volume-70 Issue-9
Year of Publication : 2022
Authors : D. Sheema, K. Ramesh, R. Surendiran, S. Gokila, S. Aiswarya
DOI : 10.14445/22315381/IJETT-V70I9P224

How to Cite?

D. Sheema, K. Ramesh, R. Surendiran, S. Gokila, S. Aiswarya, "An Algorithm for Detection and Identification of Infestation Density of Pest-Fall Armyworm in Maize Plants using Deep Learning based on IoT" International Journal of Engineering Trends and Technology, vol. 70, no. 9, pp. 240-251, 2022. Crossref, https://doi.org/10.14445/22315381/IJETT-V70I9P224

Abstract
Information Technology plays a vital role in human lives by dealing with everyday challenges. Technological innovation in agriculture provides farmers with the possibility to increase productivity along with the management of natural resources. Pests have plagued agriculture, destroying a part of the crops or even the entire field. Farmers face immense challenges in controlling pests at the early stage of their crop development. Eventually, it adversely affects the economy. A novel way of analysing pests by examining their odor substance is presented in this study. Every pest has a unique smell. Compared with other detection methodologies, Odor makes the work easier because it enables the identification of concealed pests, such as deeply buried pests, swirled pests, etc. Consequently, the proposed system takes note of Odor as a key consideration and evaluates five different smells, including pungent, misty, sweet, musty, and so forth. Here, gas sensors are utilized to combine these analyses with Faster R-CNN-based algorithm to extract features. It is also used to identify the density of infestation. Pseudocode can be used for further development to achieve accurate and timely processes. Compared with Faster R CNN-based pest detection, accuracy increased to 6%. Performance metrics of the proposed progression have been tested on some samples.

Keywords
Pest Detection, Object Detection, Detection of Odor, Faster R-CNN.

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