Identification of bagworm (Metisa plana) instar stages using hyperspectral imaging and machine learning techniques

A serious outbreak of leaf-eating insects namely bagworm (Lepidoptera: Psychidae), especially Metisa plana species, may cause a 43% yield loss in oil palm production due to late proper control of bagworm populations. Identification of the bagworm instar stage is important to ensure proper control me...

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Main Authors: Mohd Johari, Siti Nurul Afiah, Bejo, Siti Khairunniza, Mohamed Shariff, Abdul Rashid, Husin, Nur Azuan, Mohd Basri, Mohamed Mazmira, Kamarudin, Noorhazwani
Format: Article
Published: Elsevier 2022
Online Access:http://psasir.upm.edu.my/id/eprint/101769/
https://www.sciencedirect.com/science/article/pii/S0168169922000564
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spelling my.upm.eprints.1017692023-08-15T03:51:48Z http://psasir.upm.edu.my/id/eprint/101769/ Identification of bagworm (Metisa plana) instar stages using hyperspectral imaging and machine learning techniques Mohd Johari, Siti Nurul Afiah Bejo, Siti Khairunniza Mohamed Shariff, Abdul Rashid Husin, Nur Azuan Mohd Basri, Mohamed Mazmira Kamarudin, Noorhazwani A serious outbreak of leaf-eating insects namely bagworm (Lepidoptera: Psychidae), especially Metisa plana species, may cause a 43% yield loss in oil palm production due to late proper control of bagworm populations. Identification of the bagworm instar stage is important to ensure proper control measures are applied in the infested area. This study aims to distinguish the bagworm larvae from second (S2) to fifth (S5) instar stages using hyperspectral imaging and machine learning technique. The capability of spectral reflectance and morphological features namely area, perimeter, major axis length, and minor axis length to classify the instar stage were studied. A total of 2000 sample points of larva were extracted from hyperspectral images. It was then followed by the identification of sensitive wavelengths of each stage using analysis of variance (ANOVA). Results show that seven wavelengths from the blue and green band (i.e., 470 nm, 490 nm, 502 nm, 506 nm, 526 nm, 538 nm, and 554 nm) gave the most significant difference in distinguishing the larval instar stages. To provide a more economical approach, only two wavelengths were used for model development. Later, the classifications models were developed separately using five different types of datasets: (A) significant morphological feature, (B) all significant wavelengths, (C) two wavelengths from the same spectral region, (D) two wavelengths from different spectral regions, and (E) two significant wavelengths and a significant morphological feature. Results have shown the dataset which used green bands at 506 nm and 538 nm with a weighted k-nearest neighbour classifier achieved the best value of accuracy (91% – 95%), precision (0.83 – 0.87), sensitivity (0.77 – 0.99), specificity (0.94 – 0.96) and F1-score (0.81 – 0.91). It was mainly due to green pigments which strongly correlates with the chlorophyll content of the frond leaves fed by the larvae to build and enlarge the case. The capability of the model to detect the young larval instar stages (S2 - S3) where an active feeding activity takes place allows quick decisions about outbreak control measures. Elsevier 2022 Article PeerReviewed Mohd Johari, Siti Nurul Afiah and Bejo, Siti Khairunniza and Mohamed Shariff, Abdul Rashid and Husin, Nur Azuan and Mohd Basri, Mohamed Mazmira and Kamarudin, Noorhazwani (2022) Identification of bagworm (Metisa plana) instar stages using hyperspectral imaging and machine learning techniques. Computers and Electronics in Agriculture, 194. art. no. 106739. pp. 1-14. ISSN 0168-1699; ESSN: 1872-7107 https://www.sciencedirect.com/science/article/pii/S0168169922000564 10.1016/j.compag.2022.106739
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
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country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
description A serious outbreak of leaf-eating insects namely bagworm (Lepidoptera: Psychidae), especially Metisa plana species, may cause a 43% yield loss in oil palm production due to late proper control of bagworm populations. Identification of the bagworm instar stage is important to ensure proper control measures are applied in the infested area. This study aims to distinguish the bagworm larvae from second (S2) to fifth (S5) instar stages using hyperspectral imaging and machine learning technique. The capability of spectral reflectance and morphological features namely area, perimeter, major axis length, and minor axis length to classify the instar stage were studied. A total of 2000 sample points of larva were extracted from hyperspectral images. It was then followed by the identification of sensitive wavelengths of each stage using analysis of variance (ANOVA). Results show that seven wavelengths from the blue and green band (i.e., 470 nm, 490 nm, 502 nm, 506 nm, 526 nm, 538 nm, and 554 nm) gave the most significant difference in distinguishing the larval instar stages. To provide a more economical approach, only two wavelengths were used for model development. Later, the classifications models were developed separately using five different types of datasets: (A) significant morphological feature, (B) all significant wavelengths, (C) two wavelengths from the same spectral region, (D) two wavelengths from different spectral regions, and (E) two significant wavelengths and a significant morphological feature. Results have shown the dataset which used green bands at 506 nm and 538 nm with a weighted k-nearest neighbour classifier achieved the best value of accuracy (91% – 95%), precision (0.83 – 0.87), sensitivity (0.77 – 0.99), specificity (0.94 – 0.96) and F1-score (0.81 – 0.91). It was mainly due to green pigments which strongly correlates with the chlorophyll content of the frond leaves fed by the larvae to build and enlarge the case. The capability of the model to detect the young larval instar stages (S2 - S3) where an active feeding activity takes place allows quick decisions about outbreak control measures.
format Article
author Mohd Johari, Siti Nurul Afiah
Bejo, Siti Khairunniza
Mohamed Shariff, Abdul Rashid
Husin, Nur Azuan
Mohd Basri, Mohamed Mazmira
Kamarudin, Noorhazwani
spellingShingle Mohd Johari, Siti Nurul Afiah
Bejo, Siti Khairunniza
Mohamed Shariff, Abdul Rashid
Husin, Nur Azuan
Mohd Basri, Mohamed Mazmira
Kamarudin, Noorhazwani
Identification of bagworm (Metisa plana) instar stages using hyperspectral imaging and machine learning techniques
author_facet Mohd Johari, Siti Nurul Afiah
Bejo, Siti Khairunniza
Mohamed Shariff, Abdul Rashid
Husin, Nur Azuan
Mohd Basri, Mohamed Mazmira
Kamarudin, Noorhazwani
author_sort Mohd Johari, Siti Nurul Afiah
title Identification of bagworm (Metisa plana) instar stages using hyperspectral imaging and machine learning techniques
title_short Identification of bagworm (Metisa plana) instar stages using hyperspectral imaging and machine learning techniques
title_full Identification of bagworm (Metisa plana) instar stages using hyperspectral imaging and machine learning techniques
title_fullStr Identification of bagworm (Metisa plana) instar stages using hyperspectral imaging and machine learning techniques
title_full_unstemmed Identification of bagworm (Metisa plana) instar stages using hyperspectral imaging and machine learning techniques
title_sort identification of bagworm (metisa plana) instar stages using hyperspectral imaging and machine learning techniques
publisher Elsevier
publishDate 2022
url http://psasir.upm.edu.my/id/eprint/101769/
https://www.sciencedirect.com/science/article/pii/S0168169922000564
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score 13.188404