Automatic Classification of Bagworm, Metisa plana (Walker) Instar Stages Using a Transfer Learning-Based Framework

Author:

Johari Siti Nurul Afiah Mohd1ORCID,Khairunniza-Bejo Siti123ORCID,Shariff Abdul Rashid Mohamed123ORCID,Husin Nur Azuan12,Masri Mohamed Mazmira Mohd4,Kamarudin Noorhazwani4

Affiliation:

1. Department of Biological and Agricultural Engineering, Faculty of Engineering, Universiti Putra Malaysia (UPM), Serdang 43400, Selangor, Malaysia

2. Smart Farming Technology Research Centre, Universiti Putra Malaysia (UPM), Serdang 43400, Selangor, Malaysia

3. Institute of Plantation Studies, Universiti Putra Malaysia (UPM), Serdang 43400, Selangor, Malaysia

4. Malaysian Palm Oil Board (MPOB), No. 6, Persiaran Institusi, Bandar Baru Bangi, Kajang 43000, Selangor, Malaysia

Abstract

Bagworms, particularly Metisa plana Walker (Lepidoptera: Psychidae), are one of the most destructive leaf-eating pests, especially in oil palm plantations, causing severe defoliation which reduces yield. Due to the delayed control of the bagworm population, it was discovered to be the most widespread oil palm pest in Peninsular Malaysia. Identification and classification of bagworm instar stages are critical for determining the current outbreak and taking appropriate control measures in the infested area. Therefore, this work proposes an automatic classification of bagworm larval instar stage starting from the second (S2) to the fifth (S5) instar stage using a transfer learning-based framework. Five different deep CNN architectures were used i.e., VGG16, ResNet50, ResNet152, DenseNet121 and DenseNet201 to categorize the larval instar stages. All the models were fine-tuned using two different optimizers, i.e., stochastic gradient descent (SGD) with momentum and adaptive moment estimation (Adam). Among the five models used, the DenseNet121 model, which used SGD with momentum (0.9) had the best classification accuracy of 96.18% with a testing time of 0.048 s per sample. Besides, all the instar stages from S2 to S5 can be identified with high value accuracy (94.52–97.57%), precision (89.71–95.87%), sensitivity (87.67–96.65%), specificity (96.51–98.61%) and the F1-score (88.89–96.18%). The presented transfer learning approach yields promising results, demonstrating its ability to classify bagworm instar stages.

Funder

Ministry of Higher Education Malaysia

Graduate Study and Research in Agriculture

Publisher

MDPI AG

Subject

Plant Science,Agronomy and Crop Science,Food Science

Reference52 articles.

1. A review on the management of lepidoptera leaf-eaters in oil palm: Practical implementation of integrated pest management strategies;Yap;Planter,2005

2. Status of common oil palm insect pests in relation to technology adoption;Norman;Planter,2007

3. Benjamin, N. (2020, June 12). Bagworm Infestation in District Causing Palm Oil Production to Drop. Available online: https://www.thestar.com.my/news/community/2012/11/21/bagworm-infestation-in-district-causing-palm-oil-production-to-drop/.

4. Corley, R.H.V., and Tinker, P.B. (2015). The Oil Palm, Wiley.

5. Chung, G.F. (2012). Effect of Pests and Diseases on Oil Palm Yield, AOCS Press.

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