Abstract

Tree species diversity plays a significant role in our ecosystem. In order to monitor forest dynamics, hyperspectral remote sensing equipped on a small unmanned aerial vehicle (UAV) is commonly applied, such as individual tree detection and classification. However, low resolution, positioning errors and the imaging perspective of small UAV affected by wind speed/direction, complex terrain, battery capacity, aircraft posture, flying height and other human factors result in relatively large positional errors (i.e., GPS errors) in such hyperspectral images, and the precise forest dynamics monitoring is limited, especially in spatial analysis. In order to reduce the positional errors of hyperspectral images captured from a small UAV and provide a precise forest dynamics monitoring, we present a novel spatial coordinates correction approach by registering low-altitude UAV visible light and hyperspectral images. The proposed method first employs visible light images and ground control points to stitch a geographic coordinate system as our groundtruth. Hyperspectral images (UHI) are then registered onto the stitched visible light image (UVI) via a novel image registration method. Finally, spatial coordinates of the registered hyperspectral images are updated by using the aforementioned groundtruth. Extensive experiments on image registration and spatial coordinates correction demonstrate the favorable performance of our method. Compared against four state-of-the-art registration methods, our method shows the best registration performance, and the positional errors of hyperspectral images are significantly reduced. Such accuracy is considered very high in this research.

Highlights

  • Forest management can effectively change the structure of forest habitats and affect their biodiversity [1]

  • CPD [37], GLMDTPS [38], PRGLS [39] and GLCATE [40], four state-of-the-methods, are compared with the proposed method in the following experiments on the dataset (I) and (II). (ii) Since the species coordinate correction is performed by image registration, the quantitative comparison of individual tree species location adopts the actual location

  • In this paper, we have presented a novel spatial coordinates correction approach by registering low-altitude unmanned aerial vehicle (UAV) visible light and hyperspectral images to reduce the positional errors of hyperspectral images captured from a small UAV and provided a precise forest dynamics monitoring

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Summary

Introduction

Forest management can effectively change the structure of forest habitats and affect their biodiversity [1]. The forest species richness is one of the important indicators in forest ecosystem services. Forest can strongly influence the urban physical/biological environment by moderating climate, conserving energy, improving urban air quality, The associate editor coordinating the review of this manuscript and approving it for publication was Stefania Bonafoni. Precise evaluation of ecosystem services in forest relies on accurate information of species diversity and spatial distribution of dominant and rare species. Human activity, soil erosion, pests and natural disaster are causing a drastic decrease in tree species diversity, which requires long-term research and monitoring. Since traditional manual survey based on field inventory work is time-consuming and labor-intensive, there is an urgent need to monitor forest and its dynamics different temporal scales

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