18 results on '"De Vroey, Mathilde"'
Search Results
2. Measuring grassland use intensity by remote sensing for agroecological monitoring
- Author
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De Vroey, Mathilde, UCL - SST/ELI/ELIE - Environmental Sciences, UCL - Ingénierie biologique, agronomique et environnementale, Meyfroidt, Patrick, Dufrêne, Marc, Koetz, Benjamin, Hanert, Emmanuel, Defourny, Pierre, and Radoux, Julien
- Subjects
Land use intensity ,Sentinel-1 ,Remote sensing ,Sentinel-2 ,Grassland - Abstract
Grasslands cover about one-third of the global ice-free land surface and deliver crucial ecosystem services. The state of grasslands and the balance between provisioning and regulating ecosystem services are largely determined by grassland use intensity. A better characterization of grassland production systems is essential to evolve toward more sustainable grassland management. Therefore, temporally and spatially explicit data on each aspect of grassland use intensity are crucial. The overarching objective of this thesis is to measure grassland use intensity over large areas thanks to satellite remote sensing. To that end, we developed and evaluated methods, based on Sentinel-1 and Sentinel-2 time series, (i) to classify grassland management practices (i.e. grazing and mowing), (ii) to delineate management units, (iii) to detect the timing and frequency of mowing events, and (iv) to estimate forage yield and quality. Each method was thoroughly evaluated in terms of robustness, versatility, and transferability, with particular attention to reference data quality and quantitative validation. Grasslands were characterized exhaustively and with high thematic precision compared to existing datasets. Overall, EO-based grassland use intensity measurement could contribute to large-scale agricultural and ecological monitoring. (AGRO - Sciences agronomiques et ingénierie biologique) -- UCL, 2023
- Published
- 2023
3. A Consistent Land Cover Map Time Series at 2 m Spatial Resolution—The LifeWatch 2006-2015-2018-2019 Dataset for Wallonia
- Author
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Radoux, Julien, primary, Bourdouxhe, Axel, additional, Coppée, Thomas, additional, De Vroey, Mathilde, additional, Dufrêne, Marc, additional, and Defourny, Pierre, additional
- Published
- 2022
- Full Text
- View/download PDF
4. Classifying Sub-Parcel Grassland Management Practices by Optical and Microwave Remote Sensing
- Author
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De Vroey, Mathilde, primary, Radoux, Julien, additional, and Defourny, Pierre, additional
- Published
- 2022
- Full Text
- View/download PDF
5. Mowing detection using Sentinel-1 and Sentinel-2 time series for large scale grassland monitoring
- Author
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UCL - SST/ELI/ELIE - Environmental Sciences, De Vroey, Mathilde, de Vendictis, Laura, Zavagli, Massimo, Bontemps, Sophie, Heymans, Diane, Radoux, Julien, Koetz, Benjamin, Defourny, Pierre, UCL - SST/ELI/ELIE - Environmental Sciences, De Vroey, Mathilde, de Vendictis, Laura, Zavagli, Massimo, Bontemps, Sophie, Heymans, Diane, Radoux, Julien, Koetz, Benjamin, and Defourny, Pierre
- Abstract
Managed grasslands cover about one third of the European utilized agricultural area. Appropriate grassland management is key for balancing trade-offs between provisioning and regulating ecosystem services. The timing and frequency of mowing events are major factors of grassland management. Recent studies have shown the feasibility of detecting mowing events using remote sensing time series from optical and radar satellites. In this study, we present a new method combining the regular observations of Sentinel-1 (S1) and the better accuracy of Sentinel-2 (S2) grassland mowing detection algorithms. This multi-source approach for grassland monitoring was assessed over large areas and in various contexts. The method was first validated in six European countries, based on Planet image interpretation. Its performances and sensitivity were then thoroughly assessed in an independent study area using a more precise and complete reference dataset based on an intensive field campaign. Results showed the robustness of the method across all study areas and different types of grasslands. The method reached a F1-score of 79% for detecting mowing events on hay meadows. Furthermore, the detection of mowing events along the growing season allows to classify mowing practices with an overall accuracy of 69%. This is promising for differentiating grasslands in terms of management intensity. The method could therefore be used for large-scale grassland monitoring to support agri-environmental schemes in Europe.
- Published
- 2022
6. A Consistent Land Cover Map Time Series at 2 m Spatial Resolution—The LifeWatch 2006-2015-2018-2019 Dataset for Wallonia
- Author
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UCL - SST/ELI/ELIE - Environmental Sciences, Radoux, Julien, Bourdouxhe, Axel, Coppée, Thomas, De Vroey, Mathilde, Dufrêne, Marc, Defourny, Pierre, UCL - SST/ELI/ELIE - Environmental Sciences, Radoux, Julien, Bourdouxhe, Axel, Coppée, Thomas, De Vroey, Mathilde, Dufrêne, Marc, and Defourny, Pierre
- Abstract
Ecosystem accounting is based on the definition of the extent and the status of an ecosystem. Land cover maps extents are representative of several ecosystems and can therefore be used to support ecosystem accounting if reliable change information is available. The dataset described in this paper aims to provide land cover information (13 classes) for biodiversity monitoring, which has driven two key features. On one hand, open areas were described in more details (5 classes) than in the other maps available in the study area in order to increase their relevance for biodiversity models. On the other hand, monitoring means that the time series must consist of comparable layers. The time series integrate information from existing high quality land cover maps that are not fully comparable, as well as thematic products (crop type, road network and forest type) and remote sensing data (25 cm orthophotos, 0.8 pts/m2 LIDAR and Sentinel-1&2 data). Because of the high spatial resolution of the data and the fragmented landscape, boundary errors could cause a large proportion of false change detection if the maps are classified independently. Buildings and forests were therefore consolidated across time in order to build a time series where these changes can be trusted. Based on an independent validation, the overall accuracy was 93.1%, 92.6%, 94.8% and 93.9% +/− 1.3% for the years 2006, 2015, 2018 and 2019, respectively. The specific assessment of forest patch change highlighted a 98% +/− 2.7% user accuracy across the 4 years and 85% of forest cut detection. This time series will be completed and further consolidated with other dates using the same protocol and legend.
- Published
- 2022
7. Classifying Sub-Parcel Grassland Management Practices by Optical and Microwave Remote Sensing
- Author
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UCL - SST/ELI/ELIE - Environmental Sciences, De Vroey, Mathilde, Radoux, Julien, Defourny, Pierre, UCL - SST/ELI/ELIE - Environmental Sciences, De Vroey, Mathilde, Radoux, Julien, and Defourny, Pierre
- Abstract
Grassland management practices and intensities are key factors influencing the quality and balance of their provisioning and regulating ecosystem services. Most European temperate grasslands are exploited through mowing, grazing, or a combination of both in relatively small management units. Grazing and mowing can however not be considered equivalent because the first is gradual and selective and the second is not. In this study, the aim is to differentiate grasslands in terms of management practices and to retrieve homogeneous management units. Grasslands are classified hierarchically, first through a pixel-based supervised classification to differentiate grazed pastures from mown hay meadows and then through an object-based mowing detection method to retrieve the timing and frequency of mowing events. A large field dataset was used to calibrate and validate the method. For the classification, 18 different input feature combinations derived from Sentinel-1 and Sentinel-2 were tested for a random forest classifier through a cross-validation scheme. The best results were obtained based on the Leaf Area Index (LAI) times series with cubic spline interpolation. The classification differentiated pastures (grazed) from hay meadows (mown) with an overall accuracy of 88%. The classification is then combined with the existing parcel delineation and high-resolution ancillary data to retrieve the homogeneous management units, which are used for the object-based mowing detection based on the Sentinel-1 coherence and Sentinel-2 NDVI. The mowing detection performances were increased thanks to the grassland mask, the management unit delineation, and the exclusion of pastures, reaching a precision of 93% and a detection rate of 82%. This hierarchical grassland classification approach allowed to differentiate three types of grasslands, namely pastures, and meadows (including mixed practices) with an early first mowing event and with a late first mowing event, with an overall accura
- Published
- 2022
8. Classifying Sub-Parcel Grassland Management Practices by Optical and Microwave Remote Sensing.
- Author
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De Vroey, Mathilde, Radoux, Julien, and Defourny, Pierre
- Subjects
- *
OPTICAL remote sensing , *GRASSLANDS , *LEAF area index , *ECOSYSTEM services , *MICROWAVE remote sensing , *RANDOM forest algorithms - Abstract
Grassland management practices and intensities are key factors influencing the quality and balance of their provisioning and regulating ecosystem services. Most European temperate grasslands are exploited through mowing, grazing, or a combination of both in relatively small management units. Grazing and mowing can however not be considered equivalent because the first is gradual and selective and the second is not. In this study, the aim is to differentiate grasslands in terms of management practices and to retrieve homogeneous management units. Grasslands are classified hierarchically, first through a pixel-based supervised classification to differentiate grazed pastures from mown hay meadows and then through an object-based mowing detection method to retrieve the timing and frequency of mowing events. A large field dataset was used to calibrate and validate the method. For the classification, 18 different input feature combinations derived from Sentinel-1 and Sentinel-2 were tested for a random forest classifier through a cross-validation scheme. The best results were obtained based on the Leaf Area Index (LAI) times series with cubic spline interpolation. The classification differentiated pastures (grazed) from hay meadows (mown) with an overall accuracy of 88%. The classification is then combined with the existing parcel delineation and high-resolution ancillary data to retrieve the homogeneous management units, which are used for the object-based mowing detection based on the Sentinel-1 coherence and Sentinel-2 NDVI. The mowing detection performances were increased thanks to the grassland mask, the management unit delineation, and the exclusion of pastures, reaching a precision of 93% and a detection rate of 82%. This hierarchical grassland classification approach allowed to differentiate three types of grasslands, namely pastures, and meadows (including mixed practices) with an early first mowing event and with a late first mowing event, with an overall accuracy of 79%. The grasslands could be further differentiated by mowing frequency, resulting in five final classes. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
9. A Consistent Land Cover Map Time Series at 2 m Spatial Resolution—The LifeWatch 2006-2015-2018-2019 Dataset for Wallonia.
- Author
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Radoux, Julien, Bourdouxhe, Axel, Coppée, Thomas, De Vroey, Mathilde, Dufrêne, Marc, and Defourny, Pierre
- Subjects
LAND cover ,TIME series analysis ,BIODIVERSITY ,ECOSYSTEMS ,REMOTE sensing - Abstract
Ecosystem accounting is based on the definition of the extent and the status of an ecosystem. Land cover maps extents are representative of several ecosystems and can therefore be used to support ecosystem accounting if reliable change information is available. The dataset described in this paper aims to provide land cover information (13 classes) for biodiversity monitoring, which has driven two key features. On one hand, open areas were described in more details (5 classes) than in the other maps available in the study area in order to increase their relevance for biodiversity models. On the other hand, monitoring means that the time series must consist of comparable layers. The time series integrate information from existing high quality land cover maps that are not fully comparable, as well as thematic products (crop type, road network and forest type) and remote sensing data (25 cm orthophotos, 0.8 pts/m
2 LIDAR and Sentinel-1&2 data). Because of the high spatial resolution of the data and the fragmented landscape, boundary errors could cause a large proportion of false change detection if the maps are classified independently. Buildings and forests were therefore consolidated across time in order to build a time series where these changes can be trusted. Based on an independent validation, the overall accuracy was 93.1%, 92.6%, 94.8% and 93.9% +/−1.3% for the years 2006, 2015, 2018 and 2019, respectively. The specific assessment of forest patch change highlighted a 98% +/−2.7% user accuracy across the 4 years and 85% of forest cut detection. This time series will be completed and further consolidated with other dates using the same protocol and legend. Dataset: The dataset (vx18) can be visualized and downloaded from the following web portal https://maps.elie.ucl.ac.be/lifewatch. Dataset License: CC-BY [ABSTRACT FROM AUTHOR]- Published
- 2023
- Full Text
- View/download PDF
10. Crop Mapping with Combined Use of European and Chinese Satellite Data
- Author
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Fan, Jinlong, primary, Defourny, Pierre, additional, Zhang, Xiaoyu, additional, Dong, Qinghan, additional, Wang, Limin, additional, Qin, Zhihao, additional, De Vroey, Mathilde, additional, and Zhao, Chunliang, additional
- Published
- 2021
- Full Text
- View/download PDF
11. Performance Assessment of the Sen4CAP Mowing Detection Algorithm on a Large Reference Data Set of Managed Grasslands
- Author
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De Vroey, Mathilde, primary, Radoux, Julien, additional, Zavagli, Massimo, additional, De Vendictis, Laura, additional, Heymans, Diane, additional, Bontemps, Sophie, additional, and Defourny, Pierre, additional
- Published
- 2021
- Full Text
- View/download PDF
12. Evaluation of Crop Type Classification with Different High Resolution Satellite Data Sources
- Author
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UCL - SST/ELI/ELIE - Environmental Sciences, Fan, Jinlong, Zhang, Xiaoyu, Zhao, Chunliang, Qin, Zhihao, De Vroey, Mathilde, Defourny, Pierre, UCL - SST/ELI/ELIE - Environmental Sciences, Fan, Jinlong, Zhang, Xiaoyu, Zhao, Chunliang, Qin, Zhihao, De Vroey, Mathilde, and Defourny, Pierre
- Abstract
Crop type classification with satellite imageries is widely applied in support of crop production management and food security strategy. The abundant supply of these satellite data is accelerating and blooming the application of crop classification as satellite data at 10 m to 30 m spatial resolution have been made accessible easily, widely and free of charge, including optical sensors, the wide field of viewer (WFV) onboard the GaoFen (GF, high resolution in English) series from China, the MultiSpectral Instrument (MSI) onboard Sentinel 2 (S2) from Europe and the Operational Land Imager (OLI) onboard Landsat 8 (L8) from USA, thanks to the implementation of the open data policy. There are more options in using the satellite data as these three data sources are available. This paper explored the different capability of these three data sources for the crop type mapping in the same area and within the same growing season. The study was executed in a flat and irrigated area in Northwest China. Nine types of crop were classified using these three kinds of time series of data sources in 2017 and 2018, respectively. The same suites of the training samples and validation samples were applied for each of the data sources. Random Forest (RF) was used as the classifier for the crop type classification. The confusion error matrix with the OA, Kappa and F1-score was used to evaluate the accuracy of the classifications. The result shows that GF-1 relatively has the lowest accuracy as a consequence of the limited spectral bands, but the accuracy is at 93–94%, which is still excellent and acceptable for crop type classification. S2 achieved the highest accuracy of 96–98%, with 10 available bands for the crop type classification at either 10 m or 20 m. The accuracy of 97–98% for L8 is in the middle but the difference is small in comparison with S2. Any of these satellite data may be used for the crop type classification within the growing season, with a very good accuracy if the t
- Published
- 2021
13. Grassland Mowing Detection Using Sentinel-1 Time Series: Potential and Limitations
- Author
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UCL - SST/ELI - Earth and Life Institute, De Vroey, Mathilde, Radoux, Julien, Defourny, Pierre, UCL - SST/ELI - Earth and Life Institute, De Vroey, Mathilde, Radoux, Julien, and Defourny, Pierre
- Abstract
Grasslands encompass vast and diverse ecosystems that provide food, wildlife habitat and carbon storage. Their large range in land use intensity significantly impacts their ecological value and the balance between these goods and services. Mowing dates and frequencies are major aspects of grassland use intensity, which have an impact on their ecological value as habitats. Previous studies highlighted the feasibility of detecting mowing events based on remote sensing time series, a few of which using synthetic aperture radar (SAR) imagery. Although providing encouraging results, research on grassland mowing detection often lacks sufficient precise reference data for corroboration. The goal of the present study is to quantitatively and statistically assess the potential of Sentinel-1 C-band SAR for detecting mowing events in various agricultural grasslands, using a large and diverse reference data set collected in situ. Several mowing detection methods, based on SAR backscattering and interferometric coherence time series, were thoroughly evaluated. Results show that 54% of mowing events could be detected in hay meadows, based on coherence jumps. Grazing events were identified as a major confounding factor, as most false detections were made in pastures. Parcels with one mowing event in the summer were identified with the highest accuracy (71%). Overall, this study demonstrates that mowing events can be detected through Sentinel-1 coherence. However, the performances could probably be further enhanced by discriminating pastures beforehand and combining Sentinel-1 and Sentinel-2 data for mowing detection.
- Published
- 2021
14. First 1-M Resolution Land Cover Map Labeling the Overlap in the 3rd Dimension: The 2018 Map for Wallonia
- Author
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UCL - SST/ELI/ELIE - Environmental Sciences, Bassine, Céline, Radoux, Julien, Beaumont, Benjamin, Grippa, Taïs, Lennert, Moritz, Champagne, Céline, De Vroey, Mathilde, Martinet, Augustin, Bouchez, Olivier, Deffense, Nicolas, Hallot, Eric, Wolff, Eléonore, Defourny, Pierre, UCL - SST/ELI/ELIE - Environmental Sciences, Bassine, Céline, Radoux, Julien, Beaumont, Benjamin, Grippa, Taïs, Lennert, Moritz, Champagne, Céline, De Vroey, Mathilde, Martinet, Augustin, Bouchez, Olivier, Deffense, Nicolas, Hallot, Eric, Wolff, Eléonore, and Defourny, Pierre
- Abstract
Land cover maps contribute to a large diversity of geospatial applications, including but not limited to land management, hydrology, land use planning, climate modeling and biodiversity monitoring. In densely populated and highly fragmented landscapes as observed in the Walloon region (Belgium), very high spatial resolution is required to depict all the infrastructures, buildings and most of the structural elements of the semi-natural landscapes (like hedges and small water bodies). Because of the resolution, the vertical dimension needs explicit handling to avoid discontinuities incompatible with many applications. For example, how to map a river flowing under a bridge? The particularity of our data is to provide a two-digit land cover code to label all the overlapping items. The identification of all the overlaps resulted from the combination of remote sensing image analysis and decision rules involving ancillary data. The final product is therefore semantically precise and accurate in terms of land cover description thanks to the addition of 24 classes on top of the 11 pure land cover classes. The quality of the map has been assessed using a state-of-the-art validation scheme. Its overall accuracy is as high as 91.5%, with an average producer’s accuracy of 86% and an average user’s accuracy of 91%.
- Published
- 2020
15. First 1-M Resolution Land Cover Map Labeling the Overlap in the 3rd Dimension: The 2018 Map for Wallonia
- Author
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Bassine, Céline, Radoux, Julien, Beaumont, Benjamin, Grippa, Taïs, Lennert, Moritz, Champagne, Céline, De Vroey, Mathilde, Martinet, Augustin, Bouchez, Olivier, Deffense, Nicolas, Hallot, E., Wolff, Eléonore, Defourny, Pierre, Bassine, Céline, Radoux, Julien, Beaumont, Benjamin, Grippa, Taïs, Lennert, Moritz, Champagne, Céline, De Vroey, Mathilde, Martinet, Augustin, Bouchez, Olivier, Deffense, Nicolas, Hallot, E., Wolff, Eléonore, and Defourny, Pierre
- Abstract
Land cover maps contribute to a large diversity of geospatial applications, including but not limited to land management, hydrology, land use planning, climate modeling and biodiversity monitoring. In densely populated and highly fragmented landscapes as observed in the Walloon region (Belgium), very high spatial resolution is required to depict all the infrastructures, buildings and most of the structural elements of the semi-natural landscapes (like hedges and small water bodies). Because of the resolution, the vertical dimension needs explicit handling to avoid discontinuities incompatible with many applications. For example, how to map a river flowing under a bridge? The particularity of our data is to provide a two-digit land cover code to label all the overlapping items. The identification of all the overlaps resulted from the combination of remote sensing image analysis and decision rules involving ancillary data. The final product is therefore semantically precise and accurate in terms of land cover description thanks to the addition of 24 classes on top of the 11 pure land cover classes. The quality of the map has been assessed using a state-of-the-art validation scheme. Its overall accuracy is as high as 91.5%, with an average producer’s accuracy of 86% and an average user’s accuracy of 91%., SCOPUS: ar.j, info:eu-repo/semantics/published
- Published
- 2020
16. Evaluation of Crop Type Classification with Different High Resolution Satellite Data Sources
- Author
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Fan, Jinlong, primary, Zhang, Xiaoyu, additional, Zhao, Chunliang, additional, Qin, Zhihao, additional, De Vroey, Mathilde, additional, and Defourny, Pierre, additional
- Published
- 2021
- Full Text
- View/download PDF
17. Grassland Mowing Detection Using Sentinel-1 Time Series: Potential and Limitations
- Author
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De Vroey, Mathilde, primary, Radoux, Julien, additional, and Defourny, Pierre, additional
- Published
- 2021
- Full Text
- View/download PDF
18. First 1-M Resolution Land Cover Map Labeling the Overlap in the 3rd Dimension: The 2018 Map for Wallonia
- Author
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Bassine, Céline, primary, Radoux, Julien, additional, Beaumont, Benjamin, additional, Grippa, Taïs, additional, Lennert, Moritz, additional, Champagne, Céline, additional, De Vroey, Mathilde, additional, Martinet, Augustin, additional, Bouchez, Olivier, additional, Deffense, Nicolas, additional, Hallot, Eric, additional, Wolff, Eléonore, additional, and Defourny, Pierre, additional
- Published
- 2020
- Full Text
- View/download PDF
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