TY - JOUR
T1 - Automated lepidopteran pest developmental stages classification via transfer learning framework
AU - Qin, Wei Bo
AU - Abbas, Arzlan
AU - Abbas, Sohail
AU - Alam, Aleena
AU - Chen, De Hui
AU - Hafeez, Faisal
AU - Ali, Jamin
AU - Romano, Donato
AU - Chen, Ri Zhao
N1 - Publisher Copyright:
© 2024 The Author(s). Published by Oxford University Press on behalf of Entomological Society of America. All rights reserved.
PY - 2024/12/1
Y1 - 2024/12/1
N2 - The maize crop is highly susceptible to damage caused by its primary pests, which poses considerable challenges in manually identifying and controlling them at various larval developmental stages. To mitigate this issue, we propose an automated classification system aimed at identifying the different larval developmental stages of 23 instars of 4 major lepidopteran pests: the Asian corn borer, Ostrinia furnacalis (Guenee; Lepidoptera: Crambidae), the fall armyworm, Spodoptera frugiperda (J.E. Smith; Lepidoptera: Noctuidae), the oriental armyworm, Mythimna separata (Walker; Lepidoptera: Noctuidae), and the tobacco cutworm, Spodoptera litura (Fabricius; Lepidoptera: Noctuidae). Employing 5 distinct Convolutional Neural Network architectures - Convnext, Densenet121, Efficientnetv2, Mobilenet, and Resnet - we aimed to automate the process of identifying these larval developmental stages. Each model underwent fine-tuning using 2 different optimizers: stochastic gradient descent with momentum and adaptive moment estimation (Adam). Among the array of models tested, Densenet121, coupled with the Adam optimizer, exhibited the highest classification accuracy, achieving an impressive 96.65%. The configuration performed well in identifying the larval development stages of all 4 pests, with precision, recall, and F1 score evaluation indicators reaching 98.71%, 98.66%, and 98.66%, respectively. Notably, the model was ultimately tested in a natural field environment, demonstrating that Adam-Densenet121 model achieved an accuracy of 90% in identifying the 23 instars of the 4 pests. The application of transfer learning methodology showcased its effectiveness in automating the identification of larval developmental stages, underscoring promising implications for precision-integrated pest management strategies in agriculture.
AB - The maize crop is highly susceptible to damage caused by its primary pests, which poses considerable challenges in manually identifying and controlling them at various larval developmental stages. To mitigate this issue, we propose an automated classification system aimed at identifying the different larval developmental stages of 23 instars of 4 major lepidopteran pests: the Asian corn borer, Ostrinia furnacalis (Guenee; Lepidoptera: Crambidae), the fall armyworm, Spodoptera frugiperda (J.E. Smith; Lepidoptera: Noctuidae), the oriental armyworm, Mythimna separata (Walker; Lepidoptera: Noctuidae), and the tobacco cutworm, Spodoptera litura (Fabricius; Lepidoptera: Noctuidae). Employing 5 distinct Convolutional Neural Network architectures - Convnext, Densenet121, Efficientnetv2, Mobilenet, and Resnet - we aimed to automate the process of identifying these larval developmental stages. Each model underwent fine-tuning using 2 different optimizers: stochastic gradient descent with momentum and adaptive moment estimation (Adam). Among the array of models tested, Densenet121, coupled with the Adam optimizer, exhibited the highest classification accuracy, achieving an impressive 96.65%. The configuration performed well in identifying the larval development stages of all 4 pests, with precision, recall, and F1 score evaluation indicators reaching 98.71%, 98.66%, and 98.66%, respectively. Notably, the model was ultimately tested in a natural field environment, demonstrating that Adam-Densenet121 model achieved an accuracy of 90% in identifying the 23 instars of the 4 pests. The application of transfer learning methodology showcased its effectiveness in automating the identification of larval developmental stages, underscoring promising implications for precision-integrated pest management strategies in agriculture.
KW - convolutional neural network model
KW - larval development
KW - Lepidoptera
KW - transfer learning
UR - http://www.scopus.com/inward/record.url?scp=85212572805&partnerID=8YFLogxK
U2 - 10.1093/ee/nvae085
DO - 10.1093/ee/nvae085
M3 - Article
C2 - 39397261
AN - SCOPUS:85212572805
SN - 0046-225X
VL - 53
SP - 1062
EP - 1077
JO - Environmental Entomology
JF - Environmental Entomology
IS - 6
ER -