2024
DOI: 10.3390/insects15030172
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Potential of Unmanned Aerial Vehicle Red–Green–Blue Images for Detecting Needle Pests: A Case Study with Erannis jacobsoni Djak (Lepidoptera, Geometridae)

Liga Bai,
Xiaojun Huang,
Ganbat Dashzebeg
et al.

Abstract: Erannis jacobsoni Djak (Lepidoptera, Geometridae) is a leaf-feeding pest unique to Mongolia. Outbreaks of this pest can cause larch needles to shed slowly from the top until they die, leading to a serious imbalance in the forest ecosystem. In this work, to address the need for the low-cost, fast, and effective identification of this pest, we used field survey indicators and UAV images of larch forests in Binder, Khentii, Mongolia, a typical site of Erannis jacobsoni Djak pest outbreaks, as the base data, calcu… Show more

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“…They calculated the ratio of white pixels to total pixels within the canopy using a simple GIS model as a basis for assessing the damage level of individual trees, achieving a maximum average accuracy of 94% in detecting damage to individual fir trees in the Zao Mountains of Japan caused by bark beetle attacks. Bai et al [19] extracted features sensitive to pest damage severity using a continuous projection algorithm (SPA) from UAV visible-light images, combined with patterns and texture features in RGB vegetation indices, and employed machine learning methods to construct a model for identifying damage caused by Erannis jacobsoni Djak to Larix sibirica, achieving an overall accuracy of over 85%.…”
Section: Introductionmentioning
confidence: 99%
“…They calculated the ratio of white pixels to total pixels within the canopy using a simple GIS model as a basis for assessing the damage level of individual trees, achieving a maximum average accuracy of 94% in detecting damage to individual fir trees in the Zao Mountains of Japan caused by bark beetle attacks. Bai et al [19] extracted features sensitive to pest damage severity using a continuous projection algorithm (SPA) from UAV visible-light images, combined with patterns and texture features in RGB vegetation indices, and employed machine learning methods to construct a model for identifying damage caused by Erannis jacobsoni Djak to Larix sibirica, achieving an overall accuracy of over 85%.…”
Section: Introductionmentioning
confidence: 99%