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Precious Tree Pest Identification with Improved Instance Segmentation Model in Real Complex Natural Environments

Ying Guo, Junjia Gao, Xuefeng Wang, Hongyan Jia, Yanan Wang, Yi Zeng, Xin Tian, Xiyun Mu, Yan Chen, Xuan Ouyang

2022Forests12 citationsDOIOpen Access PDF

Abstract

It is crucial to accurately identify precious tree pests in a real, complex natural environment in order to monitor the growth of precious trees and provide growers with the information they need to make effective decisions. However, pest identification in real complex natural environments is confronted with several obstacles, including a lack of contrast between the pests and the background, the overlapping and occlusion of leaves, numerous variations in pest size and complexity, and a great deal of image noise. The purpose of the study was to construct a segmentation method for identifying precious tree pests in a complex natural environment. The backbone of an existing Mask region-based convolutional neural network was replaced with a Swin Transformer to improve its feature extraction capability. The experimental findings demonstrated that the suggested method successfully segmented pests in a variety of situations, including shaded, overlapped, and foliage- and branch-obscured pests. The proposed method outperformed the two competing methods, indicating that it is capable of accurately segmenting pests in a complex natural environment and provides a solution for achieving accurate segmentation of precious tree pests and long-term automatic growth monitoring.

Topics & Concepts

SegmentationComputer scienceTree (set theory)Identification (biology)Artificial intelligencePEST analysisPattern recognition (psychology)Computer visionMachine learningEcologyMathematicsBiologyBotanyMathematical analysisSmart Agriculture and AIDate Palm Research StudiesRemote Sensing in Agriculture
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