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Remote Sensing

Remote Sensing is an international, peer-reviewed, open access journal about the science and application of remote sensing technology, published semimonthly online by MDPI.
The Remote Sensing Society of Japan (RSSJ) and Japan Society of Photogrammetry and Remote Sensing (JSPRS) are affiliated with Remote Sensing and their members receive discounts on the article processing charge.
Quartile Ranking JCR - Q1 (Geosciences, Multidisciplinary)

All Articles (40,755)

Forest species diversity plays a critical role in regulating vegetation carbon sequestration potential. However, the mechanisms by which species diversity influences carbon dynamics under varying forest conditions are not yet fully understood. In this study, we used solar-induced chlorophyll fluorescence (SIF) as a proxy for carbon sequestration potential and integrated nationwide forest plot data collected through standardized protocols. A random forest model was employed to examine the influence of species diversity on carbon sequestration potential across forests differing in origin and succession. The results revealed that: (1) species diversity has a positive effect on vegetation carbon sequestration potential at the national scale (r ≈ 0.15); (2) forest origin significantly modulates this relationship, The importance index of species diversity in natural forests (0.409) was significantly higher than that in planted forests (0.043), with a relative contribution exceeding that of planted forests by approximately 20% and (3) the contribution of species diversity increases with forest succession. These findings highlight forest origin and succession as critical factors shaping the biodiversity–ecosystem functioning relationship. Our study provides a scientific basis for conserving natural forests, promoting the ecological transformation of plantation forests, and managing carbon sinks in alignment with successional dynamics.

11 February 2026

Spatial Distribution and Statistical Analysis of SI in China. (A) Relationship between SIFmean and Latitude; (B) Relationship between SIFmax and Latitude; (C) Relationship between SI and Latitude; (D) Relationship between SIFmean and Longitude; (E) Relationship between SIFmax and Longitude; (F) Relationship between SI and Longitude.

(1) Background: The accurate remote sensing extraction of mangroves is often impeded by spectral confusion, particularly the misclassification of stagnant water bodies as mangroves in flat coastal regions. (2) Methods: To overcome this challenge, we propose a novel “spectral-spatial-terrain” stepwise correction framework. This approach integrates multi-source data: Sentinel-2 imagery for spectral pre-screening, Gaofen-2 (GF-2) imagery for geometric refinement, and a newly developed Potential Waterlogging Index (PWI), derived from a digital elevation model (DEM), for topographic correction. The framework was applied to evaluate mangrove damage following Typhoon Yagi (2024) in the East Harbour National Nature Reserve. (3) Results: The method achieved high extraction accuracy, with a Kappa coefficient of 0.97. The remote sensing-based damage assessment revealed that 48.2% of the mangrove area was affected, with a significantly higher damage rate of 63.0% observed within the PWI-identified potential waterlogging zones. (4) Conclusions: The high classification accuracy confirms the effectiveness of the proposed framework. More importantly, the spatially consistent damage pattern provides strong ecological evidence supporting the mechanistic rationale behind the terrain-based correction. This study presents a reliable and transferable remote sensing methodology for high-precision, dynamic monitoring and assessment of mangrove ecosystem after disaster.

11 February 2026

Geographic location map of Dongzhai Harbor National Nature Reserve.

Equipped with an Advanced Topographic Laser Altimeter System (ATLAS), ICESat-2 (Ice, Cloud and land Elevation Satellite-2) is a photon-counting laser altimetry mission with strong potential for nearshore bathymetry. In this study, a novel filtering and bathymetric method termed a segmented adaptive filtering bathymetry has been proposed. Sea-surface photons are identified from peaks in the elevation-density histogram, enabling separation of surface and seafloor photons. The seafloor photons are then partitioned into along-track segments, where seafloor signal photons are extracted using an adaptive elliptical kernel whose parameters and orientation are determined from local density patterns and seafloor slope. The seafloor profile is obtained by polynomial fitting, and nearshore depth is estimated from the elevations of the surface and seafloor signal photons. To ensure and improve the accuracy and reliability of the proposed method, ICESat-2 data from Qilianyu Islands at the South China Sea and West Island at the Florida Keys of the United States were adopted to perform experiments. Furthermore, the bathymetric results obtained by ICESat-2 datasets at different experimental areas were compared with the reference bathymetry obtained by the airborne light detection and ranging (LiDAR) bathymetry (ALB) system. Finally, the bathymetric accuracy validation and assessment were performed. The highest accuracy of root mean square error (RMSE) and coefficient of determination (R2) has reached 0.37 m and 98%, respectively. The accuracy validation of bathymetric results at different study areas demonstrated that the method proposed in this study can automatically and effectively achieve high-precision nearshore bathymetry and topographic surveys.

11 February 2026

Location of research areas and data distribution. The dotted lines of different colors represent different track distributions of ATLAS datasets obtained at study area of Qilianyu Islands (a) and Key West (b).

Monitoring urban subsidence over ultra-long periods using time-series Interferometric synthetic aperture radar (InSAR) technology is critically important. Conventional approaches, however, face two main limitations: significant atmospheric phase residuals in complex urban settings, and discontinuous temporal time-series with short temporal coverage due to single-platform data constraints. To address these limitations, this study presents a new method for estimating ultra-long-term subsidence time series in urban areas, which combines Interferometric Subset Stacking (ISS) with multi-platform data fusion (DF). The methodology firstly processes TerraSAR-X and Sentinel-1A datasets through differential interferometry and applies ISS for atmospheric phase suppression. Next, bilinear interpolation unifies the spatial resolution and aligns the spatial reference frames of the two datasets. Subsequently, joint modeling derives subsidence velocities. Finally, temporal integration via linear interpolation and moving averaging produces a unified spatio-temporal deformation sequence. Applied to the Beijing region, China, this approach generated a 12-year ultra-long-term subsidence time series result (2012–2024), revealing maximum cumulative subsidence of 1100 mm spatially correlated with groundwater extraction patterns. Validation against Global Navigation Satellite System (GNSS) data showed strong agreement (correlation coefficient: 0.94, Root Mean Square Error (RMSE): 6.3 mm). The method achieved substantial atmospheric reduction—67.7% for Sentinel-1A and 24.1% for TerraSAR-X—representing approximately 15–20% accuracy improvement over conventional Generic Atmospheric Correction Online Service (GACOS) for InSAR. By effectively utilizing multi-platform data, this approach makes fuller use of the available phase information and compensates for the temporal gaps inherent in single-satellite datasets. It thus offers a valuable framework for long-term urban deformation monitoring.

11 February 2026

Flow chart of ISSDF. 
  
    
      N
      1
    
  
 and 
  
    
      N
      2
    
  
 denote the number of SAR acquisitions for TSX and S1A, while 
  
    
      M
      1
    
  
 and 
  
    
      M
      2
    
  
 represent the corresponding number of unwrapped interferograms. Abbreviations: MCF, Minimum Cost Flow; DEM, Digital Elevation Model; ANC, Active Noise Cancellation; SVD, Singular Value Decomposition; RMSE, Root Mean Square Error; 
  
    
      R
      2
    
  
, Coefficient of Determination; STD, Standard Deviation.

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Precision Agriculture and Crop Monitoring Based on Remote Sensing Methods
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Precision Agriculture and Crop Monitoring Based on Remote Sensing Methods

Editors: Renan Falcioni, Renato Herrig Furlanetto, Luis Crusiol
Advanced Multi-GNSS Positioning and Its Applications in Geoscience
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Advanced Multi-GNSS Positioning and Its Applications in Geoscience

Editors: Ahao Wang, Yize Zhang, Xuexi Liu, Xiangdong An, Junping Chen

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Remote Sens. - ISSN 2072-4292