Topic Editors

School of Mathematics, Shandong University, Jinan 250100, China
Wolfson College, Oxford University, Oxford OX26UD, UK

Technological Innovation and Emerging Operational Applications in Digital Earth

Abstract submission deadline
closed (17 July 2024)
Manuscript submission deadline
closed (17 October 2024)
Viewed by
12115

Topic Information

Dear Colleagues,

Data science has unanimously been recognized as a core driver for achieving the Sustainable Development Goals (SDGs) of the United Nations. Digital Earth can fully utilize data-driven technology to understand the inner mechanisms of the global environmental system as well as its impacts on economy and society. With the explosive growth of air–space–ground–sea integrated monitoring systems, the integrated observation platform of Digital Earth is developed to incorporate various active and passive microwave, visible, and infrared satellite remote sensing data sources as well as in situ observation sources. The size of observation data warehouses in Digital Earth systems is increasing sharply on terabyte, petabyte, and even exabyte scales. At the same time, with the rapid development of next-generation Earth simulators, the simulator platform of the Digital Earth is used to predict future environmental evolution and assess resulting social and societal impacts. Since more complex physical, chemical, and biological processes need to be included in higher-resolution modeling, increasing the resolution of Earth simulators by a factor of two means that about ten times as much computing power will be needed and results in the size of simulation data warehouses for Digital Earth also increasing sharply. Currently, emerging technologies, including data mining, deep learning, blockchain, cloud computing, and the internet of things, are being incorporated into Digital Earth. The Digital Earth is becoming a multidimensional, multiscale, multitemporal, and multilayered data-driven dynamic platform to model the Earth system, drive new geoinformation discoveries, and support social service issues within the three United Nations frameworks of sustainable development goals, climate change, and disaster risk reduction, as well as in the development of digital economies. This topic collection will provide an efficient and high-quality platform for promoting Digital Earth sharing, processing, mining, and analyses across the entire spectrum of Earth and environmental sciences, thereby revolutionizing the cognition of the Earth's systems.

Prof. Dr. Zhihua Zhang
Prof. Dr. M. James C. Crabbe
Topic Editors

Keywords

  • digital earth
  • climate change
  • environmental evolution
  • remote sensing observation
  • geo-information system

Participating Journals

Journal Name Impact Factor CiteScore Launched Year First Decision (median) APC
Applied Sciences
applsci
2.5 5.3 2011 17.8 Days CHF 2400
Atmosphere
atmosphere
2.5 4.6 2010 15.8 Days CHF 2400
ISPRS International Journal of Geo-Information
ijgi
2.8 6.9 2012 36.2 Days CHF 1700
Remote Sensing
remotesensing
4.2 8.3 2009 24.7 Days CHF 2700
Sustainability
sustainability
3.3 6.8 2009 20 Days CHF 2400

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Published Papers (7 papers)

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20 pages, 14310 KiB  
Article
Deep Learning Application for Biodiversity Conservation and Educational Tourism in Natural Reserves
by Marco Flórez, Oscar Becerra, Eduardo Carrillo, Manny Villa, Yuli Álvarez, Javier Suárez and Francisco Mendes
ISPRS Int. J. Geo-Inf. 2024, 13(10), 358; https://doi.org/10.3390/ijgi13100358 - 11 Oct 2024
Viewed by 888
Abstract
Natural reserves, such as the Santurbán Moor in Colombia, are ecologically important but face significant threats from activities like mining and agriculture. Preserving biodiversity in these ecosystems is essential for maintaining ecological balance and promoting sustainable tourism practices. Identifying plant species in these [...] Read more.
Natural reserves, such as the Santurbán Moor in Colombia, are ecologically important but face significant threats from activities like mining and agriculture. Preserving biodiversity in these ecosystems is essential for maintaining ecological balance and promoting sustainable tourism practices. Identifying plant species in these reserves accurately is challenging due to environmental variability and species similarities, complicating conservation efforts and educational tourism promotion. This study aims to create and assess a mobile application based on deep learning, called FloraBan, to autonomously identify plant species in natural reserves, enhancing biodiversity conservation and encouraging sustainable and educational tourism practices. The application employs the EfficientNet Lite4 model, trained on a comprehensive dataset of plant images taken in various field conditions. Designed to work offline, the application is particularly useful in remote areas. The model evaluation revealed an accuracy exceeding 90% in classifying plant images. FloraBan was effective under various lighting conditions and complex backgrounds, offering detailed information about each species, including scientific name, family, and conservation status. The ability to function without internet connectivity is a significant benefit, especially in isolated regions like natural reserves. FloraBan represents a notable improvement in the field of automated plant identification, supporting botanical research and efforts to preserve biodiversity in the Santurbán Moor. Additionally, it encourages educational and responsible tourism practices, which align with sustainability goals, providing a useful tool for both tourists and conservationists. Full article
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25 pages, 16886 KiB  
Article
A Multiple Targets ISAR Imaging Method with Removal of Micro-Motion Connection Based on Joint Constraints
by Hongxu Li, Qinglang Guo, Zihan Xu, Xinfei Jin, Fulin Su and Xiaodi Li
Remote Sens. 2024, 16(19), 3647; https://doi.org/10.3390/rs16193647 - 29 Sep 2024
Viewed by 710
Abstract
Combining multiple data sources, Digital Earth is an integrated observation platform based on air–space–ground–sea monitoring systems. Among these data sources, the Inverse Synthetic Aperture Radar (ISAR) is a crucial observation method. ISAR is typically utilized to monitor both military and civilian ships due [...] Read more.
Combining multiple data sources, Digital Earth is an integrated observation platform based on air–space–ground–sea monitoring systems. Among these data sources, the Inverse Synthetic Aperture Radar (ISAR) is a crucial observation method. ISAR is typically utilized to monitor both military and civilian ships due to its all-day and all-weather superiority. However, in complex scenarios, multiple targets may exist within the same radar antenna beam, resulting in severe defocusing due to different motion conditions. Therefore, this paper proposes a multiple-target ISAR imaging method with the removal of micro-motion connections based on the integration of joint constraints. The fully motion-compensated targets exhibit low rank and local similarity in the high-resolution range profile (HRRP) domain, while the micro-motion components possess sparsity. Additionally, targets display sparsity in the image domain. Inspired by this, we formulate a novel optimization by promoting the low-rank, the Laplacian, and the sparsity constraints of targets and the sparsity constraints of the micro-motion components. This optimization problem is solved by the linearized alternative direction method with adaptive penalty (LADMAP). Furthermore, the different motions of various targets degrade their inherent characteristics. Therefore, we integrate motion compensation transformation into the optimization, accordingly achieving the separation of rigid bodies and the micro-motion components of different targets. Experiments based on simulated data demonstrate the effectiveness of the proposed method. Full article
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25 pages, 13967 KiB  
Article
Few-Shot Hyperspectral Remote Sensing Image Classification via an Ensemble of Meta-Optimizers with Update Integration
by Tao Hao, Zhihua Zhang and M. James C. Crabbe
Remote Sens. 2024, 16(16), 2988; https://doi.org/10.3390/rs16162988 - 14 Aug 2024
Viewed by 958
Abstract
Hyperspectral images (HSIs) with abundant spectra and high spatial resolution can satisfy the demand for the classification of adjacent homogeneous regions and accurately determine their specific land-cover classes. Due to the potentially large variance within the same class in hyperspectral images, classifying HSIs [...] Read more.
Hyperspectral images (HSIs) with abundant spectra and high spatial resolution can satisfy the demand for the classification of adjacent homogeneous regions and accurately determine their specific land-cover classes. Due to the potentially large variance within the same class in hyperspectral images, classifying HSIs with limited training samples (i.e., few-shot HSI classification) has become especially difficult. To solve this issue without adding training costs, we propose an ensemble of meta-optimizers that were generated one by one through utilizing periodic annealing on the learning rate during the meta-training process. Such a combination of meta-learning and ensemble learning demonstrates a powerful ability to optimize the deep network on few-shot HSI training. In order to further improve the classification performance, we introduced a novel update integration process to determine the most appropriate update for network parameters during the model training process. Compared with popular human-designed optimizers (Adam, AdaGrad, RMSprop, SGD, etc.), our proposed model performed better in convergence speed, final loss value, overall accuracy, average accuracy, and Kappa coefficient on five HSI benchmarks in a few-shot learning setting. Full article
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29 pages, 15331 KiB  
Article
Dynamic Construction of Spherical Raster Voronoi Diagrams Based on Ordered Dilation
by Qingping Liu, Xuesheng Zhao, Yuanzheng Duan, Mengmeng Qin, Wenlan Xie and Wenbin Sun
ISPRS Int. J. Geo-Inf. 2024, 13(6), 202; https://doi.org/10.3390/ijgi13060202 - 14 Jun 2024
Viewed by 1315
Abstract
The Voronoi diagram on the Earth’s surface is a significant data model, characterized by natural proximity and dynamic stability, which has emerged as one of the most promising solutions for global spatial dynamic management and analysis. However, traditional algorithms for generating spherical raster [...] Read more.
The Voronoi diagram on the Earth’s surface is a significant data model, characterized by natural proximity and dynamic stability, which has emerged as one of the most promising solutions for global spatial dynamic management and analysis. However, traditional algorithms for generating spherical raster Voronoi diagrams find it challenging to dynamically adjust the Voronoi diagram while maintaining precision and efficiency. The efficient and accurate construction of the spherical Voronoi diagram has become one of the bottleneck issues limiting its further large-scale application. To this end, this paper proposes a dynamic construction scheme for the spherical Voronoi diagram based on the QTM (Quaternary Triangular Mesh) system, with the aim of enabling efficient generation, local updates, and multi-scale visualization of the spherical Voronoi diagrams. In this paper, canonical ordering is introduced. Tailored for the properties of the spherical triangular grid, it constructs a unified and standardized sorting strategy for the dilation of the spherical grids. The construction and updating of the spherical Voronoi diagram are achieved through the ordered dilation of sites. Furthermore, the multi-scale visualization of the spherical Voronoi diagram is realized through the hierarchical structure of the QTM. The paper presents our algorithm intuitively through pseudocode, conducts comparative experiments on the feasibility and efficiency, and designs an experiment for the dynamic navigation and management of ocean-going vessels based on the global multi-resolution Voronoi diagram. The experimental results demonstrate that our algorithm effectively controls the error of the generation of the raster Voronoi diagram and has a significant efficiency advantage when processing dynamic environments. Full article
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18 pages, 1585 KiB  
Article
A Time-Identified R-Tree: A Workload-Controllable Dynamic Spatio-Temporal Index Scheme for Streaming Processing
by Weichen Peng, Luo Chen, Xue Ouyang and Wei Xiong
ISPRS Int. J. Geo-Inf. 2024, 13(2), 49; https://doi.org/10.3390/ijgi13020049 - 4 Feb 2024
Viewed by 1899
Abstract
Many kinds of spatio-temporal data in our daily lives, such as the trajectory data of moving objects, stream natively. Streaming systems exhibit significant advantages in processing streaming data due to their distributed architecture, high throughput, and real-time performance. The use of streaming processing [...] Read more.
Many kinds of spatio-temporal data in our daily lives, such as the trajectory data of moving objects, stream natively. Streaming systems exhibit significant advantages in processing streaming data due to their distributed architecture, high throughput, and real-time performance. The use of streaming processing techniques for spatio-temporal data applications is a promising research direction. However, due to the strong dynamic nature of data in streaming processing systems, traditional spatio-temporal indexing techniques based on relatively static data cannot be used directly in stream-processing environments. It is necessary to study and design new spatio-temporal indexing strategies. Hence, we propose a workload-controllable dynamic spatio-temporal index based on the R-tree. In order to restrict memory usage, we formulate an INSERT and batch-REMOVE (I&BR) method and append a collection mechanism to the traditional R-tree. To improve the updating performance, we propose a time-identified R-tree (TIR). Moreover, we propose a distributed system prototype called a time-identified R-tree farm (TIRF). Experiments show that the TIR could work in a scenario with a controllable usage of memory and a stable response time. The throughput of the TIRF could reach 1 million points per second. The performance of a range search in the TIRF is many times better than in PostgreSQL, which is a widely used database system for spatio-temporal applications. Full article
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14 pages, 257 KiB  
Article
Digital Mergers and Acquisitions and Enterprise Innovation Quality: Analysis Based on Research and Development Investment and Overseas Subsidiaries
by Helian Xu and Shiqi Deng
Sustainability 2024, 16(3), 1120; https://doi.org/10.3390/su16031120 - 29 Jan 2024
Viewed by 2296
Abstract
Utilizing a hand-collected dataset on digital cross-border mergers and acquisitions (M&As), we conducted an exploratory study about the effect of digital overseas M&As on the innovative quality of acquiring enterprises. Based on the digital cross-border M&A behavior of Chinese listed firms from 2010 [...] Read more.
Utilizing a hand-collected dataset on digital cross-border mergers and acquisitions (M&As), we conducted an exploratory study about the effect of digital overseas M&As on the innovative quality of acquiring enterprises. Based on the digital cross-border M&A behavior of Chinese listed firms from 2010 to 2022, we offer original and robust evidence that reveals that enterprises engaging in digital cross-border M&As are more likely to produce high-quality innovations and services, and this effect may be moderated by human capital. Our explorations specifically reveal that the increase in quality of innovation from digital cross-border M&As could occur through research and development (R&D) investment and overseas subsidiaries. In addition, we found that the positive effect is especially pronounced in enterprises located in the Eastern and Western regions, and it also exists among high-tech enterprises, relatively large-scale enterprises, and digital-acquiring enterprises. We conclude by discussing how important it is for M&A enterprises to use digital technology to shape innovation quality. Full article
14 pages, 7327 KiB  
Article
Radar-SR3: A Weather Radar Image Super-Resolution Generation Model Based on SR3
by Zhanpeng Shi, Huantong Geng, Fangli Wu, Liangchao Geng and Xiaoran Zhuang
Atmosphere 2024, 15(1), 40; https://doi.org/10.3390/atmos15010040 - 29 Dec 2023
Viewed by 1676
Abstract
To solve the problems of the current deep learning radar extrapolation model consuming many resources and the final prediction result lacking details, a weather radar image super-resolution weather model based on SR3 (super-resolution via image restoration and recognition) for radar images is proposed. [...] Read more.
To solve the problems of the current deep learning radar extrapolation model consuming many resources and the final prediction result lacking details, a weather radar image super-resolution weather model based on SR3 (super-resolution via image restoration and recognition) for radar images is proposed. This model uses a diffusion model to super-resolve weather radar images to generate high-definition images and optimizes the performance of the U-Net denoising network on the basis of SR3 to further improve image quality. The model receives high-resolution images with Gaussian noise added and performs channel splicing with low-resolution images for conditional generation. The experimental results showed that the introduction of the diffusion model significantly improved the spatial resolution of weather radar images, providing new technical means for applications in related fields; when the amplification factor was 8, Radar-SR3, compared with the image super-resolution model based on the generative adversarial network (SRGAN) and the bicubic interpolation algorithm, the peak signal-to-noise ratio (PSNR) increased by 146% and 52% on average. According to this model, it is possible to train radar extrapolation models with limited computing resources with high-resolution images. Full article
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