16 results on '"Chirici, Gherardo"'
Search Results
2. Mapping Forest Growing Stock and Its Current Annual Increment Using Random Forest and Remote Sensing Data in Northeast Italy.
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Cadez, Luca, Tomao, Antonio, Giannetti, Francesca, Chirici, Gherardo, and Alberti, Giorgio
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RANDOM forest algorithms ,FOREST monitoring ,BIOMASS estimation ,FOREST surveys ,FOREST mapping - Abstract
The role of forests in providing multiple goods and services has been recognized worldwide. In such a context, reliable spatial predictions of forest attributes such as tree volume and current increment are fundamental for conducting forest monitoring, improving restoration programs, and supporting decision-making processes. This article presents the methodology and the results of the wall-to-wall spatialization of the growing stock volume and the current annual increment measured in 273 plots of data of the Italian National Forest Inventory over an area of more than 3260 km
2 in the Friuli Venezia Giulia region (Northeast Italy). To this aim, a random forest model was tested using as predictors 4 spectral indices from Sentinel-2, a high-resolution Canopy Height Model derived from LiDAR, and geo-morphological data. According to the Leave One Out cross-validation procedure, the model for the growing stock shows an R2 and an RMSE% of 0.67 and 41%, respectively. Instead, an R2 of 0.47 and an RMSE% of 57% were obtained for the current annual increment. The validation with an independent dataset further improved the models' performances, yielding significantly higher R2 values of 0.84 and 0.83 for volume and for increment, respectively. Our results underline a relatively higher importance of LiDAR-derived metrics compared to other covariates in estimating both attributes, as they were even twice as important as vegetation indices for growing stock. Therefore, these metrics are promising for the development of a national LiDAR-based model. [ABSTRACT FROM AUTHOR]- Published
- 2024
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3. Monitoring clearcutting and subsequent rapid recovery in Mediterranean coppice forests with Landsat time series
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Chirici, Gherardo, Giannetti, Francesca, Mazza, Erica, Francini, Saverio, Travaglini, Davide, Pegna, Raffaello, and White, Joanne C.
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- 2020
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4. Unsupervised algorithms to detect single trees in a mixed-species and multilayered Mediterranean forest using LiDAR data.
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Alvites, Cesar, Santopuoli, Giovanni, Maesano, Mauro, Chirici, Gherardo, Moresi, Federico Valerio, Tognetti, Roberto, Marchetti, Marco, and Lasserre, Bruno
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AIRBORNE lasers ,FOREST measurement ,STANDARD deviations ,FOREST management ,FOREST density ,LIDAR - Abstract
Copyright of Canadian Journal of Forest Research is the property of Canadian Science Publishing and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2021
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5. Are we ready for a National Forest Information System? State of the art of forest maps and airborne laser scanning data availability in Italy.
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D'Amico, Giovanni, Vangi, Elia, Francini, Saverio, Giannetti, Francesca, Nicolaci, Antonino, Travaglini, Davide, Massai, Lorenzo, Giambastiani, Yamuna, Terranova, Carlo, and Chirici, Gherardo
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AIRBORNE lasers ,FOREST mapping ,FOREST reserves ,FOREST management ,FOREST surveys ,INFORMATION storage & retrieval systems - Abstract
Forest planning, forest management, and forest policy require updated, reliable, and harmonized spatial datasets. In Italy a national geographic Forest Information System (FIS) designed to store and facilitate the access and analysis of spatial datasets is still missing. Among the different information layers which are useful to start populating a FIS, two are essential for their multiple use in the assessment of forest resources: (i) forest mapping, and (ii) data from Airborne Laser Scanning (ALS). Both layers are not available wall-to-wall for Italy, though different local sources of information potentially useful for their implementation already exist. The objectives of this work were to: (i) review forest maps and ALS data availability in Italy; (ii) develop for the first time a high resolution forest mask of Italy which was validated against the official statistics of the Italian National Forest Inventory; (iii) develop the first mosaic of all the main ALS data available in Italy producing a consistent Canopy Height Model (CHM). An on-line geographic FIS with free access to both layers from (ii) and (iii) was developed for demonstration purposes. The total area of forest and other wooded lands computed from the forest mask was 102,608.82 km2 (34% of the Italian territory), i.e., 1.9% less than the NFI benchmark estimate. This map is currently the best wall-to-wall forest mask available for Italy. We showed that only the 63% of the Italian territory (the 60% of the forest area) is covered by ALS data. These results highlight the urgent need for a national strategy to complete the availability of forest data in Italy. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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6. Integrating terrestrial and airborne laser scanning for the assessment of single-tree attributes in Mediterranean forest stands.
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Giannetti, Francesca, Puletti, Nicola, Quatrini, Valerio, Travaglini, Davide, Bottalico, Francesca, Corona, Piermaria, and Chirici, Gherardo
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FORESTS & forestry ,AIRBORNE lasers - Abstract
The development of laser scanning technologies has gradually modified methods for forest mensuration and inventory. The main objective of this study is to assess the potential of integrating ALS and TLS data in a complex mixed Mediterranean forest for assessing a set of five single-tree attributes: tree position (TP), stem diameter at breast height (DBH), tree height (TH), crown base height (CBH) and crown projection area radii (CPAR). Four different point clouds were used: from ZEB1, a hand-held mobile laser scanner (HMLS), and from FARO® FOCUS 3D, a static terrestrial laser scanner (TLS), both alone or in combination with ALS. The precision of single-tree predictions, in terms of bias and root mean square error, was evaluated against data recorded manually in the field with traditional instruments. We found that: (i) TLS and HMLS have excellent comparable performances for the estimation of TP, DBH and CPAR; (ii) TH was correctly assessed by TLS, while the accuracy by HMLS was lower; (iii) CBH was the most difficult attribute to be reliably assessed and (iv) the integration with ALS increased the performance of the assessment of TH and CPAR with both HMLS and TLS. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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7. Estimation of growing stock of broadleaved forests by airborne laser scanning
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Corona, Piermaria, Lamonaca, Andrea, Chirici, Gherardo, Travaglini, Davide, Marchetti, Marco, Minari, Emma, and Montaghi, Alessandro
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LiDAR ,Growing stock ,Model-based estimation - Abstract
Airborne laser scanning (ALS) is increasingly being proposed for surveying forest attributes. The objective of this paper is to present a new approach for the estimation of growing stock based on ALS data. The approach is distinctively developed for broadleaved stands where conventional methods for growing stock estimation based on ALS measurements of single tree heights frequently provide poor results. Theoretical background and model-based statistical estimators are reported.
- Published
- 2007
8. Modeling Mediterranean forest structure using airborne laser scanning data.
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Bottalico, Francesca, Chirici, Gherardo, Giannini, Raffaello, Mele, Salvatore, Mura, Matteo, Puxeddu, Michele, McRoberts, Ronald E., Valbuena, Ruben, and Travaglini, Davide
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AIRBORNE lasers , *OPTICAL scanners , *BIODIVERSITY , *SUSTAINABLE development , *FORESTS & forestry - Abstract
The conservation of biological diversity is recognized as a fundamental component of sustainable development, and forests contribute greatly to its preservation. Structural complexity increases the potential biological diversity of a forest by creating multiple niches that can host a wide variety of species. To facilitate greater understanding of the contributions of forest structure to forest biological diversity, we modeled relationships between 14 forest structure variables and airborne laser scanning (ALS) data for two Italian study areas representing two common Mediterranean forests, conifer plantations and coppice oaks subjected to irregular intervals of unplanned and non-standard silvicultural interventions. The objectives were twofold: (i) to compare model prediction accuracies when using two types of ALS metrics, echo-based metrics and canopy height model (CHM)-based metrics, and (ii) to construct inferences in the form of confidence intervals for large area structural complexity parameters. Our results showed that the effects of the two study areas on accuracies were greater than the effects of the two types of ALS metrics. In particular, accuracies were less for the more complex study area in terms of species composition and forest structure. However, accuracies achieved using the echo-based metrics were only slightly greater than when using the CHM-based metrics, thus demonstrating that both options yield reliable and comparable results. Accuracies were greatest for dominant height (Hd) (R 2 = 0.91; RMSE% = 8.2%) and mean height weighted by basal area (R 2 = 0.83; RMSE% = 10.5%) when using the echo-based metrics, 99th percentile of the echo height distribution and interquantile distance. For the forested area, the generalized regression (GREG) estimate of mean Hd was similar to the simple random sampling (SRS) estimate, 15.5 m for GREG and 16.2 m SRS. Further, the GREG estimator with standard error of 0.10 m was considerable more precise than the SRS estimator with standard error of 0.69 m. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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9. Methods for variable selection in LiDAR-assisted forest inventories.
- Author
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Moser, Paolo, Vibrans, Alexander C., McRoberts, Ronald E., Næsset, Erik, Gobakken, Terje, Chirici, Gherardo, Mura, Matteo, and Marchetti, Marco
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FOREST surveys ,FOREST biomass ,LIDAR ,LEAST squares ,NONLINEAR regression ,REMOTE sensing - Abstract
Estimation of wood volume and biomass is an important assignment of any National Forest Inventory. However, the estimation process is often expensive, laborious and sometimes imprecise because of small sample sizes relative to population variability. Remote sensing techniques are an option to assist in surveying large areas by providing data that can be related to the forest attribute of interest through mathematical models of relationships. Light Detection and Ranging (LiDAR) is a technology that can provide data that are closely related to forest wood volume and biomass. With these data, linear regression is often used to estimate forest attributes. If the relationship provides evidence of nonlinearity, a transformation in the variables can be considered. However, modern computation allows fitting nonlinear regression models without transformations of the variables. Nonlinear least squares (NLS) techniques also give more freedom to assure satisfaction of natural conditions such as non-negativity and/or lower and upper asymptotes. Like any estimation technique, NLS is subject to overfitting when using a large number of predictor variables. Because NLS is more computationally intensive than linear regression, stepwise selection techniques may require considerable programming effort. We compared three methods to select predictor variables for nonlinear models of relationships between forest attributes and LiDAR metrics, two of them based on genetic algorithms (GAs) and one based on random forest (RM). GAs were implemented to optimize a cost function that yields root mean square error or the Akaike Information Criterion (AIC), while RM was based on variable importance in decision trees. A model with the predictor variable most correlated with the response variable was also considered. We compared the results of overall estimation for two datasets using the model-assisted, generalized regression estimator and concluded that the combination of GAs and AIC was the most efficient and stable procedure for selection of variables. We attribute this result to the penalty that AIC applies to models with large numbers of variables, which leads to a more efficient model with a minimum loss of information. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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10. Application of Neural Networks for the retrieval of forest woody volume from SAR multifrequency data at L and C bands.
- Author
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Santi, Emanuele, Paloscia, Simonetta, Pettinato, Simone, Chirici, Gherardo, Mura, Matteo, and Maselli, Fabio
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ARTIFICIAL neural networks ,FOREST biomass ,SYNTHETIC aperture radar - Abstract
This work aims at investigating the potential of L (ALOS/PALSAR) and C (ENVISAT/ ASAR) band SAR images in forest biomass monitoring and setting up a retrieval algorithm, based on Artificial Neural Networks (ANN), for estimating the Woody Volume (WV, in m³/ha) from combined satellite acquisitions. The investigation was carried out on two test areas in central Italy, where ground WV measurements were available. An innovative retrieval algorithm based on ANN was developed for estimating WV from L and C bands SAR data. The novelty consists of an accurate training of the ANN with several thousands of data, which allowed the implementation of a very robust algorithm. The RMSE values found on San Rossore area were ≅40 m³/ha (L band data only), and 25-30 m³/ha (L with C band). On Molise, by using combined data at L and C bands, RMSE<30m³/ ha was obtained. [ABSTRACT FROM AUTHOR]
- Published
- 2015
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11. Integrating GEDI and Landsat: Spaceborne Lidar and Four Decades of Optical Imagery for the Analysis of Forest Disturbances and Biomass Changes in Italy.
- Author
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Francini, Saverio, D'Amico, Giovanni, Vangi, Elia, Borghi, Costanza, and Chirici, Gherardo
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FOREST biomass ,LANDSAT satellites ,LIDAR ,AIRBORNE lasers ,FOREST microclimatology ,FOREST monitoring ,FOREST mapping - Abstract
Forests play a prominent role in the battle against climate change, as they absorb a relevant part of human carbon emissions. However, precisely because of climate change, forest disturbances are expected to increase and alter forests' capacity to absorb carbon. In this context, forest monitoring using all available sources of information is crucial. We combined optical (Landsat) and photonic (GEDI) data to monitor four decades (1985–2019) of disturbances in Italian forests (11 Mha). Landsat data were confirmed as a relevant source of information for forest disturbance mapping, as forest harvestings in Tuscany were predicted with omission errors estimated between 29% (in 2012) and 65% (in 2001). GEDI was assessed using Airborne Laser Scanning (ALS) data available for about 6 Mha of Italian forests. A good correlation (r
2 = 0.75) between Above Ground Biomass Density GEDI estimates (AGBD) and canopy height ALS estimates was reported. GEDI data provided complementary information to Landsat. The Landsat mission is capable of mapping disturbances, but not retrieving the three-dimensional structure of forests, while our results indicate that GEDI is capable of capturing forest biomass changes due to disturbances. GEDI acquires useful information not only for biomass trend quantification in disturbance regimes but also for forest disturbance discrimination and characterization, which is crucial to further understanding the effect of climate change on forest ecosystems. [ABSTRACT FROM AUTHOR]- Published
- 2022
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12. Airborne laser scanning of forest resources: An overview of research in Italy as a commentary case study.
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Montaghi, Alessandro, Corona, Piermaria, Dalponte, Michele, Gianelle, Damiano, Chirici, Gherardo, and Olsson, Håkan
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FORESTS & forestry ,AERIAL surveys ,REMOTE sensing ,FOREST mapping - Abstract
This article reviews the recent literature concerning airborne laser scanning for forestry purposes in Italy, and presents the current methodologies used to extract forest characteristics from discrete return ALS (Airborne Laser Scanning) data. Increasing interest in ALS data is currently being shown, especially for remote sensing-based forest inventories in Italy; the driving force for this interest is the possibility of reducing costs and providing more accurate and efficient estimation of forest characteristics. This review covers a period of approximately ten years, from the first application of laser scanning for forestry purposes in 2003 to the present day, and shows that there are numerous ongoing research activities which use these technologies for the assessment of forest attributes (e.g., number of trees, mean tree height, stem volume) and ecological issues (e.g., gap identification, fuel model detection). The basic approaches – such as single tree detection and area-based modeling – have been widely examined and commented in order to explore the trend of methods in these technologies, including their applicability and performance. Finally this paper outlines and comments some of the common problems encountered in operational use of laser scanning in Italy, offering potentially useful guidelines and solutions for other countries with similar conditions, under a rather variable environmental framework comprising Alpine, temperate and Mediterranean forest ecosystems. [ABSTRACT FROM AUTHOR]
- Published
- 2013
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13. Global Airborne Laser Scanning Data Providers Database (GlobALS)—A New Tool for Monitoring Ecosystems and Biodiversity.
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Stereńczak, Krzysztof, Laurin, Gaia Vaglio, Chirici, Gherardo, Coomes, David A., Dalponte, Michele, Latifi, Hooman, and Puletti, Nicola
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AIRBORNE lasers ,WASTE recycling ,BIODIVERSITY monitoring ,OPTICAL scanners ,STRUCTURAL health monitoring ,VEGETATION dynamics - Abstract
Protection and recovery of natural resource and biodiversity requires accurate monitoring at multiple scales. Airborne Laser Scanning (ALS) provides high-resolution imagery that is valuable for monitoring structural changes to vegetation, providing a reliable reference for ecological analyses and comparison purposes, especially if used in conjunction with other remote-sensing and field products. However, the potential of ALS data has not been fully exploited, due to limits in data availability and validation. To bridge this gap, the global network for airborne laser scanner data (GlobALS) has been established as a worldwide network of ALS data providers that aims at linking those interested in research and applications related to natural resources and biodiversity monitoring. The network does not collect data itself but collects metadata and facilitates networking and collaborative research amongst the end-users and data providers. This letter describes this facility, with the aim of broadening participation in GlobALS. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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14. Influence of Scan Density on the Estimation of Single-Tree Attributes by Hand-Held Mobile Laser Scanning.
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Del Perugia, Barbara, Giannetti, Francesca, Chirici, Gherardo, and Travaglini, Davide
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OPTICAL scanners ,SCANNING laser ophthalmoscopy ,REMOTE sensing ,FOREST management ,LIDAR - Abstract
Nowadays, forest inventories are frequently carried out using a combination of field measurements and remote sensing data, often acquired with light detection and ranging (LiDAR) sensors. Several studies have investigated how three-dimensional laser scanning point clouds from different platforms can be used to acquire information traditionally collected with forest instruments, such as hypsometers and callipers to detect single-tree attributes like tree height and diameter at the breast height. The present study has tested the performances of the ZEB1 instrument, a type of hand-held mobile laser scanner, for single-tree attributes estimation in pure Castanea sativa Mill. stands cultivated for fruit production in Central Italy. In particular, the influence of walking scan path density on single-tree attributes estimation (number of trees, tree position, diameter at breast height, tree height, and crown base height) was investigated to test the efficiency of field measures. The point clouds were acquired by walking along straight lines drawn with different spacing: 10 and 15 m apart. A single-tree scan approach, which included walking with the instrument around each tree, was used as reference data. In order to evaluate the efficiency of the survey, the influence of the walking scan path was discussed in relation to the accuracy of single-tree attributes estimation, as well as the time and cost needed for data acquisition, pre-processing, and analysis. Our results show that the 10 m scan path provided the best results, with an omission error of 6%; the assessment of single-tree attributes was successful, with values of the coefficient of determination and the relative root mean square error similar to other studies. The 10 m scan path has also proved to decrease the costs by about €14 for data pre-processing, and a saving of time for data acquisition and data analysis of about 37 min compared to the reference data. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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15. Validating GEDI tree canopy cover product across forest types using co-registered aerial LiDAR data.
- Author
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Li, Xiao, Li, Linyuan, Ni, Wenjian, Mu, Xihan, Wu, Xiaodan, Vaglio Laurin, Gaia, Vangi, Elia, Stereńczak, Krzysztof, Chirici, Gherardo, Yu, Shiyou, and Huang, Huaguo
- Subjects
- *
FOREST canopies , *LIDAR , *FOREST products , *FOREST monitoring , *LASER altimeters - Abstract
Reliable tree canopy cover (TCC) products are vital for national forest inventory, land process modeling and forest dynamic monitoring. The new generation of space-based laser altimeter, GEDI, offers a three-dimensional (3D) insight on the forest structure, shaping the paradigm of structural variable estimation. However, the generality of newly released GEDI level-2 TCC product version 2 was less investigated across various forest types. Additionally, satellite-derived product validation usually suffers from the geolocation mismatch between satellite and reference data. In this study, we comprehensively validated the GEDI TCC product across seven forest types using the reference TCC derived from several public and private aerial LiDAR datasets after geographical registration, and crossly compared with a commonly-used passive satellite product (i.e., GFCC TCC). As the reference aerial TCC maps were derived using various aerial LiDAR instruments, we investigated the consistency of TCC estimation among them using simulation datasets and found that the distributions of TCC relative bias (biasR, %) were almost identical and the differences of relative RMSE (rRMSE, %) was less than 0.2%. Through the registration process, we found that the geolocation offsets of GEDI footprints tended to be independent of azimuth directions and their average was about 10 m, verifying the necessity of registration during the validation process. Importantly, the post-registration validation of GEDI TCC showed an average RMSE of 0.10 and an average R2 of 0.85 for all forest types, resulting in a decrease of RMSE of up to 0.15 and an increase of R2 of up to 0.33 compared to the pre-registration validation. The inter-comparison also exhibited improved consistency between GEDI and GFCC TCC products after registration. Further, we found a non-negligible dependence of GEDI TCC on the slope factor but almost independence on forest type, encouraging the spread of GEDI TCC product. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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- View/download PDF
16. Corrigendum to "Validating GEDI tree canopy cover product across forest types using co-registered aerial LiDAR data" [ISPRS J. Photogramm. Remote Sens. 207 (2024) 326–337].
- Author
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Li, Xiao, Li, Linyuan, Ni, Wenjian, Mu, Xihan, Wu, Xiaodan, Laurin, Gaia Vaglio, Vangi, Elia, Stereńczak, Krzysztof, Chirici, Gherardo, Yu, Shiyou, and Huang, Huaguo
- Subjects
- *
FOREST canopies , *FOREST products , *LIDAR - Published
- 2024
- Full Text
- View/download PDF
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