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Search Results (289)

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Keywords = archaeological remote sensing

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38 pages, 130393 KB  
Article
Can Spectral Anomalies in Sentinel-2 Imagery Be Used as a Proxy for Archaeological Prospection? A Demonstration on Roman Age Sites in Italy
by Antonio Corbo, Alessandro Maria Jaia and Deodato Tapete
Land 2026, 15(5), 753; https://doi.org/10.3390/land15050753 - 29 Apr 2026
Viewed by 49
Abstract
Remote sensing is widely used in archaeological prospection to detect surface anomalies (crop marks) indicating buried remains, typically through recognition of visual patterns in high- or very high-resolution imagery acquired by means of satellite, airborne, or drone sensors. In contrast, spectroscopic approaches focusing [...] Read more.
Remote sensing is widely used in archaeological prospection to detect surface anomalies (crop marks) indicating buried remains, typically through recognition of visual patterns in high- or very high-resolution imagery acquired by means of satellite, airborne, or drone sensors. In contrast, spectroscopic approaches focusing on variations in spectral signatures still remain rarely applied in archaeological research. This study proposes a technological barrier-free method addressed to archaeologists which is based on pixel-level analysis of the Reflectance Values (RV) and spectral shape variations in the visible, near-infrared and short-wave infrared (VIS-NIR-SWIR) range derived from Sentinel-2 imagery. Spectral signatures are extracted through sampling polygons designed to account for the spatial resolution of the different Sentinel-2 bands and their spatial relationship with the location and size of the archaeological features. The RV method is tested on two Roman archaeological contexts: the ancient city of Telesia Vetere (San Salvatore Telesino, Benevento) and a Roman villa at Podere Colle Agnano (Labro, Rieti) using the full Sentinel-2 archive since 2017. While Telesia has previously been investigated through aerial photo interpretation and archaeological fieldwork, the Roman villa at Labro is documented here for the first time. Results show consistent seasonal repeated spectral separability between areas corresponding to known buried archaeological features and surrounding areas. Similar anomalies were also detected in areas without previously documented remains, thus suggesting the possible presence of buried structures and highlighting the predictive potential of the RV method. Owing to its easiness to use beyond image processing specialism and reliance on open-access data, the method can support archaeological decision-making and guide further investigation with higher-resolution remote sensing data or targeted field surveys, particularly in the framework of preventive archaeology. Full article
(This article belongs to the Special Issue Novel Methods and Trending Topics in Landscape Archaeology)
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18 pages, 23944 KB  
Article
Underwater Archaeological Survey of the SS Samuel J. Tilden Wreck (Bari, Italy)
by Marco Procaccini and Federico Ugolini
Heritage 2026, 9(5), 161; https://doi.org/10.3390/heritage9050161 (registering DOI) - 24 Apr 2026
Viewed by 155
Abstract
Recent underwater and remote sensing surveys identified, located, and documented the wreck of a Liberty-class cargo ship, SS Samuel J. Tilden, which sank during the German raid of Bari in December 1943. The use of remote sensing technologies (MBES, ROVs) and the [...] Read more.
Recent underwater and remote sensing surveys identified, located, and documented the wreck of a Liberty-class cargo ship, SS Samuel J. Tilden, which sank during the German raid of Bari in December 1943. The use of remote sensing technologies (MBES, ROVs) and the photogrammetric acquisition for the creation of 3D models were central for a comprehensive analysis of the wreck site. The analysis of remote sensing and photogrammetric data indicates a well-preserved wreck, as previously noted in avocational underwater surveys, and a complex maritime landscape. By applying remote sensing and non-invasive technologies to conflict archaeology remains, this paper provides a basis for future studies on World War II wrecks in Italy. Full article
26 pages, 32897 KB  
Article
Unveiling Ancient Nile Channels in Qena, Egypt: A Spaceborne Imagery Approach Using Google Earth Engine
by Luke Bumgarner, Eman Ghoneim, Mohamed Fathy, Philip Cross, Raghda El-Behaedi, Suzanne Onstine, Timothy J. Ralph, Yvonne Marsan, Michael Benedetti, Peng Gao, Yann Tristant and Amr S. Fahil
Remote Sens. 2026, 18(8), 1184; https://doi.org/10.3390/rs18081184 - 15 Apr 2026
Viewed by 847
Abstract
The Nile River has played a central role in Egypt’s historical and cultural development, shaping ancient civilizations and settlement patterns. However, its course has changed dynamically over millennia, leaving behind buried channels and geomorphological features that are critical for reconstructing past hydrological landscapes. [...] Read more.
The Nile River has played a central role in Egypt’s historical and cultural development, shaping ancient civilizations and settlement patterns. However, its course has changed dynamically over millennia, leaving behind buried channels and geomorphological features that are critical for reconstructing past hydrological landscapes. This study utilized Sentinel-2 satellite imagery within Google Earth Engine to develop a remote sensing method for analyzing spectral and temporal variations in vegetation as indicators of paleofluvial landforms and past river activity. The approach, applied to create ten seasonal representations, enhanced the detection of moisture-driven vegetation patterns. Here, the Moisture-Gradient Enhanced Vegetation Index (MGEVI) was developed to identify stable vegetated landforms and differentiate persistent moisture conditions from seasonal variations. Through this method, former river channels, river islands, and channel belts were identified, revealing patterns of past river activities. The results suggest a late anabranching phase of the Nile, characterized by the gradual stabilization of fluvial features in response to evolving hydrological conditions. A comparison between fluvial features identified through remote sensing and those mapped from TanDEM-X radar elevation data and historical maps revealed strong agreement, affirming the reliability of the remote sensing approach developed by this study. Evidence from sediment core analyses, stratigraphic correlation, and high-precision RTK field surveys further corroborated the existence of ancient, buried channels and islands within the study area. The study highlights the utility of multi-temporal satellite imagery analysis for reconstructing hydrological evolution and assessing past settlement suitability. Specifically, an inferred paleochannel near the Dendera Temple Complex suggests a possible hydrological connection between a former course of the Nile River and this archaeological site. These findings underscore the potential of remote sensing for large-scale geoarchaeological studies, offering scalable methodologies for identifying ancient river networks and supporting cultural heritage conservation in arid regions. Full article
(This article belongs to the Section Remote Sensing in Geology, Geomorphology and Hydrology)
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22 pages, 1709 KB  
Review
Satellite Remote Sensing for Cultural Heritage Protection: The Consensus Platform and AI-Assisted Bibliometric Analysis of Scientific and Grey Literature (2010–2025)
by Claudio Sossio De Simone, Nicola Masini and Nicodemo Abate
Heritage 2026, 9(4), 149; https://doi.org/10.3390/heritage9040149 - 3 Apr 2026
Viewed by 536
Abstract
Satellite remote sensing has rapidly evolved from an experimental support tool into a structural component of preventive archaeology and cultural heritage governance. Drawing on scientific publications and policy-oriented grey literature from 2010–2025, this study provides an integrated review of how optical, SAR, and [...] Read more.
Satellite remote sensing has rapidly evolved from an experimental support tool into a structural component of preventive archaeology and cultural heritage governance. Drawing on scientific publications and policy-oriented grey literature from 2010–2025, this study provides an integrated review of how optical, SAR, and multi-sensor satellite data are used to detect archaeological sites, monitor landscape and structural change, and support risk-informed planning across diverse legal and institutional contexts. A multi-platform workflow combines AI-assisted semantic querying (Consensus), bibliometric searches (Scopus), and the collaborative management and geospatial visualisation of references through Zotero, VOSviewer (1.6.19), and QGIS (3.44)-based literature mapping, thereby linking thematic trends, co-authorship networks, and geographical patterns of research and regulation. The results show non-linear but marked publication growth, a strongly interdisciplinary profile, and the consolidation of international hubs that drive advances in Sentinel-2-based prospection, Landsat and night-time lights urbanisation metrics, and SAR time series for deformation, looting, and conflict-damage mapping. Parallel analysis of grey literature and institutional initiatives (Copernicus Cultural Heritage Task Force, national “extraordinary plans”, regional declarations, and UNESCO guidelines) reveals the codification of satellite Earth observation within rescue archaeology protocols, emergency archaeology, and long-term conservation strategies. Overall, the evidence indicates a transition towards data-driven, multi-sensor, and multi-scalar research, underpinned by open satellite data, reproducible workflows, and AI-supported evidence synthesis. Full article
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24 pages, 16213 KB  
Article
Monitoring Remote Archaeological Sites Through Open-Access Satellite Datasets Against Natural Hazards—Case Study: Delos
by Ana Sofia Duțu, Vlad Florin Osztrovszky, Kyriakos Michaelides and Athos Agapiou
Heritage 2026, 9(4), 143; https://doi.org/10.3390/heritage9040143 - 31 Mar 2026
Viewed by 409
Abstract
This research presents a comprehensive multi-domain environmental assessment of Delos Island, a UNESCO World Heritage Site, through integration of long-term atmospheric and satellite remote sensing datasets. A significant methodological contribution of this research is the development of a cross-mission harmonization approach that enables [...] Read more.
This research presents a comprehensive multi-domain environmental assessment of Delos Island, a UNESCO World Heritage Site, through integration of long-term atmospheric and satellite remote sensing datasets. A significant methodological contribution of this research is the development of a cross-mission harmonization approach that enables the reconstruction of a continuous, multi-decadal atmospheric record. By implementing a hierarchical calibration pipeline to harmonise Ozone Monitoring Instrument (OMI) and Tropospheric Monitoring Instrument (TROPOMI) observations, the study effectively eliminated a 6.61-fold systematic instrument offset, producing a 21-year time series (2004–2025) of tropospheric NO2 concentrations. Simultaneously, a 24-year analysis (2000–2024) of coastline dynamics was conducted using the Landsat archive to quantify land area changes across the island and within a 1.03 km2 Archaeological Area of Interest (AOI). Results indicate that atmospheric NO2 concentrations stabilised following a 2015 peak, while coastal erosion represents a measurable risk to structural integrity. Net land loss of 18,400 m2 was documented within the AOI, driven by localised geomorphological factors and exposure to Meltemi winds. The results indicate that these environmental processes are physically independent yet collectively require a multilayered conservation strategy to protect vulnerable archaeological heritage from atmospheric pollution and coastal retreat. Furthermore, the research highlights the value of long-term satellite datasets spanning more than two decades for supporting heritage monitoring and management, especially in remote or hard-to-reach locations. Through the analysis of the spatial and temporal characteristics of these sensors, the research enables the identification of hazard proxies that can inform risk-aware decision-making. Full article
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20 pages, 15718 KB  
Article
Assessing the Relationship Between Erosion Risk, Climate Change and Archaeological Heritage: Medieval Sites in the Basilicata Region, Italy
by Alessia Frisetti, Nicodemo Abate, Antonio Minervino Amodio, Dario Gioia, Giuseppe Corrado, Maria Danese, Gabriele Ciccone and Nicola Masini
Heritage 2026, 9(3), 89; https://doi.org/10.3390/heritage9030089 - 24 Feb 2026
Viewed by 952
Abstract
Climate change has among its effects the increasing frequency and intensity of natural disasters, such as landslides, floods, erosion and fires, with clear implications on both natural and anthropic hazards and risks. These natural phenomena pose a growing threat to archaeological heritage through [...] Read more.
Climate change has among its effects the increasing frequency and intensity of natural disasters, such as landslides, floods, erosion and fires, with clear implications on both natural and anthropic hazards and risks. These natural phenomena pose a growing threat to archaeological heritage through increased rates of soil erosion, flooding, and landslides. This study presents a multidisciplinary approach to assess the erosion risk affecting medieval rural settlements in the Basilicata Region of Southern Italy. This area is characterised by high-impact natural phenomena that have influenced settlement patterns in the past. The focus is on rural settlements that arose during the Middle Ages, some of which were abandoned as early as the late Middle Ages. This study has the dual objective of analysing the natural causes that may have led to the abandonment of many sites in ancient times and producing a predictive multi-risk map of the possible loss of cultural heritage sites. By integrating archaeological data, remote sensing, historical sources, and geospatial modelling, a multi-risk map was developed to identify areas at the highest risk. The results demonstrate the urgent need for proactive conservation strategies in the face of ongoing climatic change. Full article
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20 pages, 5156 KB  
Article
The Example of the Use of Remote Sensing and GIS Tools for Modeling Selected Geospatial Issues
by Cyryl Konstantinovski Puntos, Eva Savina Malinverni and Sławomir Mikrut
Appl. Sci. 2026, 16(4), 1901; https://doi.org/10.3390/app16041901 - 13 Feb 2026
Viewed by 428
Abstract
The issue of land use is currently commonly taken up by researchers in many aspects, e.g., geography, GIS or related sciences. However, the research gap occurs in the historical, partial reconstruction of the old agricultural and natural realities. The main objective of this [...] Read more.
The issue of land use is currently commonly taken up by researchers in many aspects, e.g., geography, GIS or related sciences. However, the research gap occurs in the historical, partial reconstruction of the old agricultural and natural realities. The main objective of this article is to determine potential and actual places that were most useful for agriculture in the Early Middle Ages and to present human pressure on the natural environment. The results were developed in the form of colorful models that were generated on the basis of the following parameters: slope, river network, settlement, landscape and climate-vegetation belts. As a result, after summing up the above-mentioned maps, a new model was created, which was properly analyzed in terms of geoarchaeology in relation to early-medieval hillforts and the soil map in southern Małopolska. This article illustrates methods that can support broader interdisciplinary research in other regions of Europe (e.g., Italy) and the delimitation of medieval administrative borders. Full article
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18 pages, 1623 KB  
Review
AI Chatbots and Remote Sensing Archaeology: Current Landscape, Technical Barriers, and Future Directions
by Nicolas Melillos and Athos Agapiou
Heritage 2026, 9(1), 32; https://doi.org/10.3390/heritage9010032 - 16 Jan 2026
Viewed by 1392
Abstract
Chatbots have emerged as a promising interface for facilitating access to complex datasets, allowing users to pose questions in natural language rather than relying on specialized technical workflows. At the same time, remote sensing has transformed archaeological practice by producing vast amounts of [...] Read more.
Chatbots have emerged as a promising interface for facilitating access to complex datasets, allowing users to pose questions in natural language rather than relying on specialized technical workflows. At the same time, remote sensing has transformed archaeological practice by producing vast amounts of imagery from LiDAR, drones, and satellites. While these advances have created unprecedented opportunities for discovery, they also pose significant challenges due to the scale, heterogeneity, and interpretative demands of the data. In related scientific domains, multimodal conversational systems capable of integrating natural language interaction with image-based analysis have advanced rapidly, supported by a growing body of survey and review literature documenting their architectures, datasets, and applications across multiple fields. By contrast, archaeological applications of chatbots remain limited to text-based prototypes, primarily focused on education, cultural heritage mediation or archival search. This review synthesizes the historical development of chatbots, examines their current use in remote sensing, and evaluates the barriers to adapting such systems for archaeology. Four major challenges are identified: data scale and heterogeneity, scarcity of training datasets, computational costs, and uncertainties around usability and adoption. By comparing experiences across domains, this review highlights both the opportunities and the limitations of integrating conversational AI into archaeological workflows. The central conclusion is that domain-specific adaptation is essential if multimodal chatbots are to become effective analytical partners in archaeology. Full article
(This article belongs to the Section Digital Heritage)
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18 pages, 12298 KB  
Article
Ancient Burial Mounds Detection in the Altai Mountains with High-Resolution Satellite Images
by Fen Chen, Lu Jin, Jean Bourgeois, Xiangguo Zuo, Tim Van de Voorde, Wouter Gheyle, Timo Balz and Gino Caspari
Remote Sens. 2026, 18(2), 185; https://doi.org/10.3390/rs18020185 - 6 Jan 2026
Cited by 1 | Viewed by 1111
Abstract
The Altai Mountains rank among the world’s most notable and valuable archaeological regions. Within the sprawling Altai Mountains area, burial mounds (kurgans) of past civilizations, which are sometimes well preserved in permafrost, are a particularly precious trove of archaeological insights. This study investigates [...] Read more.
The Altai Mountains rank among the world’s most notable and valuable archaeological regions. Within the sprawling Altai Mountains area, burial mounds (kurgans) of past civilizations, which are sometimes well preserved in permafrost, are a particularly precious trove of archaeological insights. This study investigates the application of deep learning-based object detection techniques for automatic kurgan identification in high-resolution satellite imagery. We compare the performance of various object detection methods utilizing both convolutional neural network and Transformer backbones. Our results validate the effectiveness of different approaches, especially with larger models, in the challenging task of detecting small archaeological structures. Techniques addressing the class imbalance can further improve performance of off-the-shelf methods. These findings demonstrate the feasibility of employing deep learning techniques to automate kurgan identification, which can improve archaeological surveying processes. It suggests the potential of deep learning technology for constructing a comprehensive inventory of Altai Mountain kurgans, particularly relevant in the context of global warming and archaeological site preservation. Full article
(This article belongs to the Special Issue Applications of Remote Sensing in Landscape Archaeology)
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30 pages, 6576 KB  
Article
Landscape Change Detection and Its Impact on Ancient Egyptian UNESCO Built Heritage in Abu Ghurab, Abusir, and Saqqara World Heritage Sites, Badrashin, Giza, Egypt
by Abdelrhman Fahmy
Heritage 2026, 9(1), 5; https://doi.org/10.3390/heritage9010005 - 23 Dec 2025
Viewed by 1262
Abstract
Urban expansion causes increasing risks to archaeological heritage and yet few studies have systematically analyzed multi-site urban change using consistent temporal datasets and standardized methods. In this sense, this study addresses this gap by applying a multi-temporal urban change detection framework to the [...] Read more.
Urban expansion causes increasing risks to archaeological heritage and yet few studies have systematically analyzed multi-site urban change using consistent temporal datasets and standardized methods. In this sense, this study addresses this gap by applying a multi-temporal urban change detection framework to the Memphis region, focusing on the Abu Gurab, Abusir and Saqqara sites. To conduct this research, high-resolution satellite imagery from 2004, 2008 and 2025 was processed using harmonized geospatial classification and overlay techniques to quantify built-up area growth and identify zones where modern development threatens key monuments to include the Sun Temples of Userkaf and Nyuserre, and the pyramids of Sahure, Neferirkare and Neferefre. A GIS- and remote sensing-based workflow, combining supervised classification, post-classification comparison and buffer zone analysis, enabled precise monitoring of urban encroachment. Additionally, high-resolution imagery and in situ inspections supported detailed decay mapping of select monuments, using grayscale normalization and false-color analysis to quantify surface deterioration objectively. This approach highlights the progressive impact of urbanization on archaeological structures and provides actionable data for archaeological sites management. Finally, the results contribute to heritage risk assessment, support evidence-based conservation planning, and inform urban planning strategies in line with Sustainable Development Goal 11.4 and the UNESCO Historic Urban Landscape Recommendation (HULR). Full article
(This article belongs to the Special Issue Sustainability for Heritage)
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28 pages, 27801 KB  
Article
Optimising Deep Learning-Based Segmentation of Crop and Soil Marks with Spectral Enhancements on Sentinel-2 Data
by Andaleeb Yaseen, Giulio Poggi, Sebastiano Vascon and Arianna Traviglia
Remote Sens. 2025, 17(24), 4014; https://doi.org/10.3390/rs17244014 - 12 Dec 2025
Cited by 1 | Viewed by 792
Abstract
This study presents the first systematic investigation into the influence of spectral enhancement techniques on the segmentation accuracy of specific soil and vegetation marks associated with palaeochannels. These marks are often subtle and can be seasonally obscured by vegetation dynamics and soil variability. [...] Read more.
This study presents the first systematic investigation into the influence of spectral enhancement techniques on the segmentation accuracy of specific soil and vegetation marks associated with palaeochannels. These marks are often subtle and can be seasonally obscured by vegetation dynamics and soil variability. Spectral enhancement methods, such as spectral indices and statistical aggregations, are routinely applied to improve their visual discriminability and interpretability. Despite recent progress in automated detection workflows, no prior research has rigorously quantified the effects of these enhancement techniques on the performance of deep learning–based segmentation models. This gap at the intersection of remote sensing and AI-driven analysis is critical, as addressing it is essential for improving the accuracy, efficiency, and scalability of subsurface feature detection across large and heterogeneous landscapes. In this study, two state-of-the-art deep learning architectures, U-Net and YOLOv8, were trained and tested to assess the influence of these spectral transformations on model performance, using Sentinel-2 imagery acquired across three seasonal windows. Across all experiments, spectral enhancement techniques led to clear improvements in segmentation accuracy compared with raw multispectral inputs. The multi-temporal Median Visualisation (MV) composite provided the most stable performance overall, achieving mean IoU values of 0.22 ± 0.02 in April, 0.07 ± 0.03 in August, and 0.19 ± 0.03 in November for U-Net, outperforming the full 12-band Sentinel-2 stack, which reached only 0.04, 0.02, and 0.03 in the same periods. FCC and VBB also performed competitively, e.g., FCC reached 0.21 ± 0.02 (April) and VBB 0.18 ± 0.03 (April), showing that compact three-band enhancements consistently exceed the segmentation quality obtained from using all spectral bands. Performance varied with environmental conditions, with April yielding the highest accuracy, while August remained challenging across all methods. These results highlight the importance of seasonally informed spectral preprocessing and establish an empirical benchmark for integrating enhancement techniques into AI-based archaeological and geomorphological prospection workflows. Full article
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28 pages, 11936 KB  
Article
AC-YOLOv11: A Deep Learning Framework for Automatic Detection of Ancient City Sites in the Northeastern Tibetan Plateau
by Xuan Shi and Guangliang Hou
Remote Sens. 2025, 17(24), 3997; https://doi.org/10.3390/rs17243997 - 11 Dec 2025
Viewed by 1216
Abstract
Ancient walled cities represent key material evidence for early state formation and human–environment interaction on the northeastern Tibetan Plateau. However, traditional field surveys are often constrained by the vastness and complexity of the plateau environment. This study proposes an improved deep learning framework, [...] Read more.
Ancient walled cities represent key material evidence for early state formation and human–environment interaction on the northeastern Tibetan Plateau. However, traditional field surveys are often constrained by the vastness and complexity of the plateau environment. This study proposes an improved deep learning framework, AC-YOLOv11, to achieve automated detection of ancient city remains in the Qinghai Lake Basin using 0.8 m GF-2 satellite imagery. By integrating a dual-path attention residual network (AC-SENet) with multi-scale feature fusion, the model enhances sensitivity to faint geomorphic and structural features under conditions of erosion, vegetation cover, and modern disturbance. Training on the newly constructed Qinghai Lake Ancient City Dataset (QHACD) yielded a mean average precision (mAP@0.5) of 82.3% and F1-score of 94.2%. Model application across 7000 km2 identified 309 potential sites, of which 74 were verified as highly probable ancient cities, and field investigations confirmed 3 new sites with typical rammed-earth characteristics. Spatial analysis combining digital elevation models and hydrological data shows that 75.7% of all ancient cities are located within 10 km of major rivers or the lake shoreline, primarily between 3500 and 4000 m a.s.l. These results reveal a clear coupling between settlement distribution and environmental constraints in the high-altitude arid zone. The AC-YOLOv11 model demonstrates strong potential for large-scale archaeological prospection and offers a methodological reference for automated heritage mapping on the Qinghai–Tibet Plateau. Full article
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20 pages, 17902 KB  
Article
Managing Coastal Erosion and Exposure in Sandy Beaches of a Tropical Estuarine System
by Rodolfo J. V. Araújo, Tereza C. M. Araújo, Pedro S. Pereira, Heithor Alexandre de Araujo Queiroz and Rodrigo Mikosz Gonçalves
Sustainability 2025, 17(24), 11046; https://doi.org/10.3390/su172411046 - 10 Dec 2025
Viewed by 596
Abstract
Integrated Coastal Zone Management (ICZM) requires multi-scalar, high-resolution monitoring data to effectively address climate change impacts, particularly sea-level rise and accelerated erosion. This study presents an innovative Remote Sensing (RS) and Geoinformatics approach to precisely quantify and contextualize the exposure of sandy beaches. [...] Read more.
Integrated Coastal Zone Management (ICZM) requires multi-scalar, high-resolution monitoring data to effectively address climate change impacts, particularly sea-level rise and accelerated erosion. This study presents an innovative Remote Sensing (RS) and Geoinformatics approach to precisely quantify and contextualize the exposure of sandy beaches. The research focuses on the highly dynamic insular tidal inlet margin of the Pontal Sul da Ilha de Itamaracá, located within a tropical estuarine system in Northeast Brazil that is subject to intense anthropogenic pressure. The methodology of this study integrates high-resolution GNSS-PPK surveys from two seasonal cycles (2017–2018) with a Difference of DEMs (DoD) analysis to precisely quantify seasonal sediment transport. Furthermore, a multi-temporal analysis leverages the Fort Orange Archaeological Site as a stable datum, combining colonial-era maps with modern satellite imagery to trace shoreline evolution. During the 2017–2018 period, maximum erosion (up to ~2.60 m in altimetric losses) affected the southern and central-northern shoreline, while accretion (up to ~2.25 m in altimetric gains) occurred between these erosional sectors and in the northeastern offshore area. This multi-scalar approach provides the robust data necessary for ICZM, effectively prioritizing sustainable, nature-based strategies that align with local administrative capacities. Full article
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15 pages, 2174 KB  
Review
Assessing the Evolution of Research on Mediterranean Coastal Cultural Heritage Under Climate Extremes and Crisis: A Systematic Literature Review (2000–2024)
by Aliki Gkaifyllia, Ourania Tzoraki, Isavela Monioudi and Thomas Hasiotis
Heritage 2025, 8(11), 491; https://doi.org/10.3390/heritage8110491 - 20 Nov 2025
Cited by 1 | Viewed by 927
Abstract
Mediterranean coastal cultural heritage sites are increasingly threatened by the impacts of climate change, including sea-level rise, coastal erosion, and extreme weather events, which endanger both their physical integrity and their cultural and economic value. Safeguarding these vulnerable cultural assets requires approaches that [...] Read more.
Mediterranean coastal cultural heritage sites are increasingly threatened by the impacts of climate change, including sea-level rise, coastal erosion, and extreme weather events, which endanger both their physical integrity and their cultural and economic value. Safeguarding these vulnerable cultural assets requires approaches that integrate technological innovation with effective governance and management strategies. This study presents a systematic review of research published between 2000 and 2024, conducted in accordance with PRISMA guidelines to ensure methodological rigor and transparency. Searches were conducted in Scopus, Web of Science, and Google Scholar, limited to English-language studies explicitly addressing coastal cultural heritage in the Mediterranean. A total of 77 studies were analyzed using bibliometric and spatial techniques to examine thematic trends, methodological orientations, and regional patterns. Results reveal a sharp rise in scholarly output after 2014, with Italy, Greece, and Cyprus emerging as dominant contributors. The literature demonstrates a strong emphasis on tangible cultural heritage, particularly archaeological sites and monuments, while cultural landscapes and nature–culture systems receive comparatively limited attention. Methodologically, the field is dominated by digital and technology-driven tools such as GIS, remote sensing, 3D documentation, and climate modelling, with socially grounded and participatory approaches appearing in less than 5% of studies. More than 70% of the reviewed works adopt case study designs, which constrain comparative and generalizable insights. In contrast, a predominance of future-oriented assessments highlights a persistent lack of present-day monitoring and baseline data. Collectively, these findings clarify the paper’s exclusive focus on coastal cultural heritage, underscore the need to broaden geographical coverage, integrate socio-institutional dimensions with environmental diagnostics, and prioritize empirical, present-focused approaches. In this direction, future research will advance an integrated framework for assessing coastal vulnerability at both site-specific and regional scales, supporting proactive and evidence-based conservation planning. Full article
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25 pages, 19225 KB  
Article
Multi-Resolution and Multi-Temporal Satellite Remote Sensing Analysis to Understand Human-Induced Changes in the Landscape for the Protection of Cultural Heritage: The Case Study of the MapDam Project, Syria
by Nicodemo Abate, Diego Ronchi, Sara Elettra Zaia, Gabriele Ciccone, Alessia Frisetti, Maria Sileo, Nicola Masini, Rosa Lasaponara, Tatiana Pedrazzi and Marina Pucci
Land 2025, 14(11), 2233; https://doi.org/10.3390/land14112233 - 11 Nov 2025
Cited by 1 | Viewed by 2710
Abstract
This study presents a multi-resolution and multi-temporal remote sensing approach to assess human-induced changes in cultural landscapes, with a focus on the archaeological site of Amrit (Syria) within the MapDam project. By integrating satellite archives (KH, Landsat series, NASADEM) with ancillary geospatial data [...] Read more.
This study presents a multi-resolution and multi-temporal remote sensing approach to assess human-induced changes in cultural landscapes, with a focus on the archaeological site of Amrit (Syria) within the MapDam project. By integrating satellite archives (KH, Landsat series, NASADEM) with ancillary geospatial data (OpenStreetMap) and advanced analytical methods, four decades (1984–2024) of land-use/land-cover (LULC) change and shoreline dynamics were reconstructed. Machine learning classification (Random Forest) achieved high accuracy (Test Accuracy = 0.94; Kappa = 0.89), enabling robust LULC mapping, while predictive modelling of urban expansion, calibrated through a Gradient Boosting Machine, attained a Figure of Merit of 0.157, confirming strong predictive reliability. The results reveal path-dependent urban growth concentrated on low-slope terrains (≤5°) and consistent with proximity to infrastructure, alongside significant shoreline regression after 1974. A Business-as-Usual projection for 2024–2034 estimates 8.676 ha of new anthropisation, predominantly along accessible plains and peri-urban fringes. Beyond quantitative outcomes, this study demonstrates the replicability and scalability of open-source, data-driven workflows using Google Earth Engine and Python 3.14, making them applicable to other high-risk heritage contexts. This transparent methodology is particularly critical in conflict zones or in regions where cultural assets are neglected due to economic constraints, political agendas, or governance limitations, offering a powerful tool to document and safeguard endangered archaeological landscapes. Full article
(This article belongs to the Section Land – Observation and Monitoring)
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