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1. A Review of the Density, Biomass, and Secondary Production of Odonates.

2. Biomass Estimation and Saturation Value Determination Based on Multi-Source Remote Sensing Data.

3. Automatic Shrimp Fry Counting Method Using Multi-Scale Attention Fusion.

4. A COMPARISON THROUGH TREE EXTRACTION IN IMAGE-SPACE AND OBJECT-SPACE.

5. Urban Above-Ground Biomass Estimation Using GEDI Laser Data and Optical Remote Sensing Images.

6. Forest Aboveground Biomass Estimation Using Multisource Remote Sensing Data and Deep Learning Algorithms: A Case Study over Hangzhou Area in China.

7. Exploring the Potential of UAV LiDAR Data for Trunk Point Extraction and Direct DBH Measurement.

8. INDIVIDUAL TREE SEGMENTATION FROM BLS DATA BASED ON GRAPH AUTOENCODER.

9. Forest Aboveground Biomass Estimation in Subtropical Mountain Areas Based on Improved Water Cloud Model and PolSAR Decomposition Using L-Band PolSAR Data.

10. Enabling Deep-Neural-Network-Integrated Optical and SAR Data to Estimate the Maize Leaf Area Index and Biomass with Limited In Situ Data.

11. LIDAR-Based Forest Biomass Remote Sensing: A Review of Metrics, Methods, and Assessment Criteria for the Selection of Allometric Equations.

12. Sampling Estimation and Optimization of Typical Forest Biomass Based on Sequential Gaussian Conditional Simulation.

13. Individual Tree Aboveground Biomass Estimation Based on UAV Stereo Images in a Eucalyptus Plantation.

14. Unmanned Aerial System-Based Wheat Biomass Estimation Using Multispectral, Structural and Meteorological Data.

15. Effects of outliers on remote sensing‐assisted forest biomass estimation: A case study from the United States national forest inventory.

16. Estimation of Quercus Biomass in Shangri-La Based on GEDI Spaceborne Lidar Data.

17. A Review of Estimation Methods for Aboveground Biomass in Grasslands Using UAV.

18. Development of Estimation Models for Individual Tree Aboveground Biomass Based on TLS-Derived Parameters.

19. Analyzing TLS Scan Distribution and Point Density for the Estimation of Forest Stand Structural Parameters.

20. Refined Aboveground Biomass Estimation of Moso Bamboo Forest Using Culm Lengths Extracted from TLS Point Cloud.

21. Effectiveness of the Reconstructed MODIS Typical-Angle Reflectances on Forest Biomass Estimation.

22. A Migratory Biomass Statistical Method Based on High-Resolution Fully Polarimetric Entomological Radar.

23. Remote Sensing on Alfalfa as an Approach to Optimize Production Outcomes: A Review of Evidence and Directions for Future Assessments.

24. Prediction of Strawberry Dry Biomass from UAV Multispectral Imagery Using Multiple Machine Learning Methods.

25. Allometric Equations for the Biomass Estimation of Calophyllum inophyllum L. in Java, Indonesia.

26. How Well Do 'Catch-Only' Assessment Models Capture Catch Time Series Start Years and Default Life History Prior Values? A Preliminary Stock Assessment of the South Atlantic Ocean Blue Shark Using a Catch-Based Model.

27. Estimation of Seaweed Biomass Based on Multispectral UAV in the Intertidal Zone of Gouqi Island.

28. Forest Above-Ground Biomass Inversion Using Optical and SAR Images Based on a Multi-Step Feature Optimized Inversion Model.

29. Estimation of Parameters of Biomass State of Sowing Spring Wheat.

31. Forage Height and Above-Ground Biomass Estimation by Comparing UAV-Based Multispectral and RGB Imagery.

32. Prediction accuracy and repeatability of UAV based biomass estimation in wheat variety trials as affected by variable type, modelling strategy and sampling location.

33. Estimation of Maize Biomass at Multi-Growing Stage Using Stem and Leaf Separation Strategies with 3D Radiative Transfer Model and CNN Transfer Learning.

34. Mapping Forest Growing Stock and Its Current Annual Increment Using Random Forest and Remote Sensing Data in Northeast Italy.

35. Research on Rapeseed Above-Ground Biomass Estimation Based on Spectral and LiDAR Data.

36. GEOGRAPHICALLY WEIGHTED REGRESSION MODELLING FOR ABOVE-GROUND BIOMASS ASSESSMENT FROM SATELLITE IMAGERY IN TAD SUNG WATERFALL PARK FOREST, THAILAND.

37. EVALUATING PIXEL-BASED AND OBJECT-BASED APPROACHES FOR FOREST ABOVE-GROUND BIOMASS ESTIMATION USING A COMBINATION OF OPTICAL, SAR, AND AN EXTREME GRADIENT BOOSTING MODEL.

38. BIOMASS ESTIMATION ALONG A CLIMATIC GRADIENT USING MULTI-FREQUENCY POLARIMETRIC RADAR VEGETATION INDEX.

39. Non-Invasive Fish Biometrics for Enhancing Precision and Understanding of Aquaculture Farming through Statistical Morphology Analysis and Machine Learning.

40. Biomass Estimation of Milk Vetch Using UAV Hyperspectral Imagery and Machine Learning.

41. Simulating the Net Primary Production of Even-Aged Forests by the Use of Remote Sensing and Ecosystem Modelling Techniques.

42. An Improved Approach to Estimate Stocking Rate and Carrying Capacity Based on Remotely Sensed Phenology Timings.

43. Forest Aboveground Biomass Estimation and Inventory: Evaluating Remote Sensing-Based Approaches.

44. Foliar Application of Strontium for the Identification of Roots from Specific Wheat Plants.

45. Development of Allometric Equations to Determine the Biomass of Plant Components and the Total Storage of Carbon Dioxide in Young Mediterranean Argan Trees.

46. Inversion study of the meadow steppe above-ground biomass based on ground and airborne hyperspectral data.

47. Comparative Analysis of Laboratory-Based and Spectroscopic Methods Used to Estimate the Algal Density of Chlorella vulgaris.

48. Integration of Unmanned Aerial Vehicle Spectral and Textural Features for Accurate Above-Ground Biomass Estimation in Cotton.

49. Estimating Urban Forests Biomass with LiDAR by Using Deep Learning Foundation Models.

50. Aboveground Biomass Inversion Based on Object-Oriented Classification and Pearson–mRMR–Machine Learning Model.