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Application of Deep Learning in Geomatics and Satellite Image Processing

A special issue of Applied Sciences (ISSN 2076-3417). This special issue belongs to the section "Earth Sciences".

Deadline for manuscript submissions: 20 June 2025 | Viewed by 2499

Special Issue Editor


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Guest Editor
Department of Geomatic, Faculty of Civil Engineering, Czech Technical University in Prague, Thákurova 7, 166 36 Prague, Czech Republic
Interests: remote sensing; photogrammetry; laser scanning; geophysics; historical object documentation
Special Issues, Collections and Topics in MDPI journals

Special Issue Information

Dear Colleagues,

The field of geomatics, which includes geodesy, mapping, and remote sensing, as well as laser scanning and cartography, has seen tremendous development in recent years. With the advent of advanced technologies, such as deep learning, there has been a paradigm shift in the way data are processed and analyzed. Deep learning techniques have not only increased the accuracy and precision of geospatial data analysis but have also accelerated the decision-making process. The forthcoming SI intends to address the use of deep learning in geomatics and satellite image processing in various applications and emphasizes the importance and new capabilities and processing speed in solving complex spatial problems.

One of the most common applications of deep learning in geomatics is the classification of satellite and aerial imagery. Deep learning models, in particular convolutional neural networks (CNNs), show significant performance in automatically extracting features from satellite imagery and aerial images. By training CNN models on labeled datasets, researchers have successfully classified land cover types, vegetation density, urban and rural areas, and other spatial features present in satellite imagery. These accurate classifications help in land management, urban planning, and environmental monitoring, as well as archaeology and historical data processing, among other applications.

Another application of deep learning in geomatics is the detection and segmentation of objects in satellite and aerial images, as well as in laser scanning data. Deep learning methods have outperformed many of the traditional data processing techniques and have enabled the efficient and accurate extraction of individual objects such as buildings, vehicles, defined structures, and water bodies. Similarly, this is also true for point clouds from laser scanning. This information is very valuable in disaster management, infrastructure planning, natural resource monitoring, and the analysis of complex complexes.

Deep learning techniques have also been used to address the problem of change detection and time series analysis in satellite or aerial imagery. By training deep learning models on historical imagery and ground data, researchers can automatically identify and quantify the changes that occur over time. These changes can include deforestation, urban sprawl, glacier retreat, and other land use changes. This application helps in tracking patterns and trends, which ultimately supports conservation efforts and decision making.

The mapping and monitoring of land cover or the Earth's surface, in general, have historically relied on manual interpretations of satellite and aerial imagery or geomatics data in general, both for civil and military purposes. This laborious process has been time-consuming and prone to human error. Later, spectral signature-based classifications or object-oriented classifications based on multispectral or hyperspectral sensing were extensively developed, especially in the nineties and at the turn of the new millennium. Deep learning models have significantly improved this process by automating land cover mapping and monitoring. By training CNN models on multispectral satellite imagery, researchers can accurately delineate land cover categories such as forests, agricultural land, water bodies, and impervious surfaces. This application facilitates better land management, environmental planning, and habitat protection.

It should be noted that these new technologies are also applicable in other fields, such as geology, archaeology, and the analysis of old maps. Another application of deep learning is the exploration of other planets and asteroids, where, after all, we do not have data other than from remote sensing.

The application of deep learning in geomatics and satellite image processing has revolutionized the way geospatial information is acquired and analyzed. By using the power of deep learning models, researchers and industry professionals can automate the tasks that were previously time-consuming and manual in nature. Deep learning increases the accuracy, efficiency, and scalability of geospatial data analysis, leading to better decision making. With the further development of deep learning techniques, its application in geomatics will undoubtedly further contribute to our understanding of the Earth and its complex spatial dynamics.

Prof. Dr. Karel Pavelka
Guest Editor

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Keywords

  • deep learning
  • remote sensing
  • photogrammetry
  • laser scanning
  • drones
  • historical object documentation
  • cartography
  • geomatics

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Published Papers (2 papers)

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Research

19 pages, 10586 KiB  
Article
Semantic-Enhanced Foundation Model for Coastal Land Use Recognition from Optical Satellite Images
by Mengmeng Shao, Xiao Xie, Kaiyuan Li, Changgui Li and Xiran Zhou
Appl. Sci. 2024, 14(20), 9431; https://doi.org/10.3390/app14209431 - 16 Oct 2024
Viewed by 800
Abstract
Coastal land use represents the combination of various land cover forms in a coastal area, which helps us understand the historical events, current conditions, and future progress of a coastal area. Currently, the emergence of high-resolution optical satellite images significantly extends the scope [...] Read more.
Coastal land use represents the combination of various land cover forms in a coastal area, which helps us understand the historical events, current conditions, and future progress of a coastal area. Currently, the emergence of high-resolution optical satellite images significantly extends the scope of coastal land cover recognition, and deep learning models provide a significant possibility of extracting high-level abstract features from an optical satellite image to characterize complicated coastal land covers. However, recognition systems for labeling are always defined differently for specific departments, organizations, and institutes. Moreover, considering the complexity of coastal land uses, it is impossible to create a benchmark dataset that fully covers all types of coastal land uses. To improve the transferability of high-level features generated by deep learning to reduce the burden of creating a massive amount of labeled data, this paper proposes an integrated framework to support semantically enriched coastal land use recognition, including foundation model-powered multi-label coastal land cover classification and conversion from coastal land cover mapping into coastal land use semantics with a vector space model (VSM). The experimental results prove that the proposed method outperformed the state-of-the-art deep learning approaches in complex coastal land use recognition. Full article
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16 pages, 7653 KiB  
Article
People Detection Using Artificial Intelligence with Panchromatic Satellite Images
by Peter Golej, Pavel Kukuliač, Jiří Horák, Lucie Orlíková and Pavol Partila
Appl. Sci. 2024, 14(18), 8555; https://doi.org/10.3390/app14188555 - 23 Sep 2024
Viewed by 1191
Abstract
The detection of people in urban environments from satellite imagery can be employed in a variety of applications, such as urban planning, business management, crisis management, military operations, and security. A WorldView-3 satellite image of Prague was processed. Several variants of feature-extracting networks, [...] Read more.
The detection of people in urban environments from satellite imagery can be employed in a variety of applications, such as urban planning, business management, crisis management, military operations, and security. A WorldView-3 satellite image of Prague was processed. Several variants of feature-extracting networks, referred to as backbone networks, were tested alongside the Faster R–CNN model. This model combines region proposal networks with object detection, offering a balance between speed and accuracy that is well suited for dense and varied urban environments. Data augmentation was used to increase the robustness of the models, which contributed to the improvement of classification results. Achieving a high level of accuracy is an ongoing challenge due to the low spatial resolution of available imagery. An F1 score of 54% was achieved using data augmentation, a 15 cm buffer, and a maximum distance limit of 60 cm. Full article
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