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Dive into the research topics where Emanuelle Feliciano is active.

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Featured researches published by Emanuelle Feliciano.


Remote Sensing | 2015

Evaluation of Polarimetric SAR Decomposition for Classifying Wetland Vegetation Types

Sang-Hoon Hong; Hyun Ok Kim; Shimon Wdowinski; Emanuelle Feliciano

The Florida Everglades is the largest subtropical wetland system in the United States and, as with subtropical and tropical wetlands elsewhere, has been threatened by severe environmental stresses. It is very important to monitor such wetlands to inform management on the status of these fragile ecosystems. This study aims to examine the applicability of TerraSAR-X quadruple polarimetric (quad-pol) synthetic aperture radar (PolSAR) data for classifying wetland vegetation in the Everglades. We processed quad-pol data using the Hong & Wdowinski four-component decomposition, which accounts for double bounce scattering in the cross-polarization signal. The calculated decomposition images consist of four scattering mechanisms (single, co- and cross-pol double, and volume scattering). We applied an object-oriented image analysis approach to classify vegetation types with the decomposition results. We also used a high-resolution multispectral optical RapidEye image to compare statistics and classification results with Synthetic Aperture Radar (SAR) observations. The calculated classification accuracy was higher than 85%, suggesting that the TerraSAR-X quad-pol SAR signal had a high potential for distinguishing different vegetation types. Scattering components from SAR acquisition were particularly advantageous for classifying mangroves along tidal channels. We conclude that the typical scattering behaviors from model-based decomposition are useful for discriminating among different wetland vegetation types.


Remote Sensing | 2016

A Comparison of Mangrove Canopy Height Using Multiple Independent Measurements from Land, Air, and Space

David Lagomasino; Temilola Fatoyinbo; Seung-Kuk Lee; Emanuelle Feliciano; Carl C. Trettin; Marc Simard

Canopy height is one of the strongest predictors of biomass and carbon in forested ecosystems. Additionally, mangrove ecosystems represent one of the most concentrated carbon reservoirs that are rapidly degrading as a result of deforestation, development, and hydrologic manipulation. Therefore, the accuracy of Canopy Height Models (CHM) over mangrove forest can provide crucial information for monitoring and verification protocols. We compared four CHMs derived from independent remotely sensed imagery and identified potential errors and bias between measurement types. CHMs were derived from three spaceborne datasets; Very-High Resolution (VHR) stereophotogrammetry, TerraSAR-X add-on for Digital Elevation Measurement, and Shuttle Radar Topography Mission (TanDEM-X), and lidar data which was acquired from an airborne platform. Each dataset exhibited different error characteristics that were related to spatial resolution, sensitivities of the sensors, and reference frames. Canopies over 10 m were accurately predicted by all CHMs while the distributions of canopy height were best predicted by the VHR CHM. Depending on the guidelines and strategies needed for monitoring and verification activities, coarse resolution CHMs could be used to track canopy height at regional and global scales with finer resolution imagery used to validate and monitor critical areas undergoing rapid changes.


international geoscience and remote sensing symposium | 2017

3D forest structure parameter retrieval: Polarimetric SAR interferometry and waveform lidar airborne data

Seung-Kuk Lee; Temilola Fatoyinbo; Batuhan Osmanoglu; David Lagomasino; Emanuelle Feliciano

Forest vertical structure parameters are one of critical components for understanding of the global forest carbon storage and cycle, as well as climate changes. Polarimetric SAR Interferometry (Pol-InSAR) techniques and waveform lidar have been widely and successfully used for extracting 3D forest structure profiles by means of both SAR and lidar airborne systems, but individually. Therefore, fusing both data sets and developing new algorithms and models to understand forest structure are critical. We have used waveform lidar data acquired by NASAs LVIS (Land, Vegetation, and ICE sensor and SAR data acquired by various airborne and spaceborne SAR systems over mangrove forests in Pongara national park, Gabon.


Remote Sensing | 2017

Estimating Mangrove Canopy Height and Above-Ground Biomass in the Everglades National Park with Airborne LiDAR and TanDEM-X Data

Emanuelle Feliciano; Shimon Wdowinski; Matthew D. Potts; Seung Kuk Lee; Temilola Fatoyinbo

Mangrove forests are important natural ecosystems due to their ability to capture and store large amounts of carbon. Forest structural parameters, such as canopy height and above-ground biomass (AGB), provide a good measure for monitoring temporal changes in carbon content. The protected coastal mangrove forest of the Everglades National Park (ENP) provides an ideal location for studying these processes, as harmful human activities are minimal. We estimated mangrove canopy height and AGB in the ENP using Airborne LiDAR/Laser (ALS) and TanDEM-X (TDX) datasets acquired between 2011 and 2013. Analysis of both datasets revealed that mangrove canopy height can reach up to ~25 m and AGB can reach up to ~250 Mg•ha−1. In general, mangroves ranging from 9 m to 12 m in stature dominate the forest canopy. The comparison of ALS and TDX canopy height observations yielded an R2 = 0.85 and Root Mean Square Error (RMSE) = 1.96 m. Compared to a previous study based on data acquired during 2000–2004, our analysis shows an increase in mangrove stature and AGB, suggesting that ENP mangrove forests are continuing to accumulate biomass. Our results suggest that ENP mangrove forests have managed to recover from natural disturbances, such as Hurricane Wilma.


international geoscience and remote sensing symposium | 2016

Ground-level digital terrain model (DTM) construction from TanDEM-X InSAR data and WorldView stereo-photogrammetric images

Seung-Kuk Lee; Temilola Fatoyinbo; David Lagomasino; Batuhan Osmanoglu; Emanuelle Feliciano

The ground-level digital elevation model (DEM) or digital terrain model (DTM) information are invaluable for environmental modeling, such as water dynamics in forests, canopy height, forest biomass, carbon estimation, etc. We propose to extract the DTM over forested areas from the combination of interferometric complex coherence from single-pass TanDEM-X (TDX) data at HH polarization and Digital Surface Model (DSM) derived from high-resolution WorldView (WV) image pair by means of random volume over ground (RVoG) model. The RVoG model is a widely and successfully used model for polarimetric SAR interferometry (Pol-InSAR) technique for vertical forest structure parameter retrieval [1][2][3][4]. The ground-level DEM have been obtained by complex volume decorrelation in the RVoG model with the DSM using stere-ophotogrammetric technique. Finally, the airborne lidar data were used to validate the ground-level DEM and forest canopy height results.


Wetlands | 2014

Assessing Mangrove Above-Ground Biomass and Structure using Terrestrial Laser Scanning: A Case Study in the Everglades National Park

Emanuelle Feliciano; Shimon Wdowinski; Matthew D. Potts


Environmental Research Letters | 2017

Estimating mangrove aboveground biomass from airborne LiDAR data: a case study from the Zambezi River delta

Temilola Fatoyinbo; Emanuelle Feliciano; David Lagomasino; Seung Kuk Lee; Carl Trettin


IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing | 2018

Multibaseline TanDEM-X Mangrove Height Estimation: The Selection of the Vertical Wavenumber

Seung-Kuk Lee; Temilola Fatoyinbo; David Lagomasino; Emanuelle Feliciano; Carl C. Trettin


2014 AGU Fall Meeting | 2014

Estimating Mangrove Canopy Height and Above-Ground Biomass in Everglades National Park with Airbone LiDAR and TanDEM-X Data.

Emanuelle Feliciano


Archive | 2011

Everglades Vegetation Biomass SRS6 TLS U-016 PS01 SV01

Shimon Wdowinski; Emanuelle Feliciano; Brendan Hodge

Collaboration


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Temilola Fatoyinbo

Goddard Space Flight Center

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David Lagomasino

Goddard Space Flight Center

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Seung-Kuk Lee

Goddard Space Flight Center

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Batuhan Osmanoglu

Goddard Space Flight Center

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Carl C. Trettin

United States Forest Service

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Seung Kuk Lee

Goddard Space Flight Center

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Carl Trettin

United States Department of Agriculture

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Marc Simard

Jet Propulsion Laboratory

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