Abstract

In this article, a multichannel convolutional neural network (CNN) based object detection was used to detect suspected trees of pine wilt disease after acquiring aerial photographs through a rotorcraft drone equipped with a multispectral camera. The acquired multispectral aerial photographs consist of RGB, green, red, NIR, and red edge spectral bands per shooting point. The aerial photographs for each band performed image calibration to correct radiation distortion, image alignment to correct the distance error of the lenses of a multispectral camera, and image enhancement to edge enhancement to highlight the features of objects in the image. After that, a large amount of data obtained through data augmentation were put into multichannel CNN-based object detection for training and test. As a result of verifying the detection performance of the trained model, excellent detection results were obtained with mAP 86.63% and average intersection over union 71.47%.

Highlights

  • Pine Wilt Disease (PWD) is caused by close interaction between three factors that are tree, mediated insect and pathogens

  • The suspected trees infected with PWD, which has spread to other countries, causes browning and death in indigenous species in the region, causing much damage

  • Most deep learning-based tree detection models using aerial photography are based on RGB images

Read more

Summary

Introduction

Pine Wilt Disease (PWD) is caused by close interaction between three factors that are tree, mediated insect and pathogens. A pathogen that provides a direct cause of PWD, are nematodes that resemble threads of around 1 mm in size [2]. It cannot move on its own, and invades into the body of larvae that normally live in PWD-infected trees. The suspected trees infected with PWD, which has spread to other countries, causes browning and death in indigenous species in the region, causing much damage. It is very important to quickly and accurately detect and eliminate the PWD-infected trees in which the larvae of the mediated insect lives

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call