scholarly journals Knowledge and Data-Driven Mapping of Environmental Status Indicators from Remote Sensing and VGI

2020 ◽  
Vol 12 (3) ◽  
pp. 495
Author(s):  
Alessia Goffi ◽  
Gloria Bordogna ◽  
Daniela Stroppiana ◽  
Mirco Boschetti ◽  
Pietro Alessandro Brivio

The paper proposes a transparent approach for mapping the status of environmental phenomena from multisource information based on both soft computing and machine learning. It is transparent, intended as human understandable as far as the employed criteria, and both knowledge and data-driven. It exploits remote sensing experts’ interpretations to define the contributing factors from which partial evidence of the environmental status are computed by processing multispectral images. Furthermore, it computes an environmental status indicator (ESI) map by aggregating the partial evidence degrees through a learning mechanism, exploiting volunteered geographic information (VGI). The approach is capable of capturing the specificities of local context, as well as to cope with the subjectivity of experts’ interpretations. The proposal is applied to map the status of standing water areas (i.e., water bodies and rivers and human-driven or natural hazard flooding) using multispectral optical images by ESA Sentinel-2 sources. VGI comprises georeferenced observations created both in situ by agronomists using a mobile application and by photointerpreters interacting with a geographic information system (GIS) using several information layers. Results of the validation experiments were performed in three areas of Northern Italy characterized by distinct ecosystems. The proposal showed better performances than traditional methods based on single spectral indexes.

2020 ◽  
Vol 12 (22) ◽  
pp. 3690 ◽  
Author(s):  
Angela Lausch ◽  
Michael E. Schaepman ◽  
Andrew K. Skidmore ◽  
Sina C. Truckenbrodt ◽  
Jörg M. Hacker ◽  
...  

The status, changes, and disturbances in geomorphological regimes can be regarded as controlling and regulating factors for biodiversity. Therefore, monitoring geomorphology at local, regional, and global scales is not only necessary to conserve geodiversity, but also to preserve biodiversity, as well as to improve biodiversity conservation and ecosystem management. Numerous remote sensing (RS) approaches and platforms have been used in the past to enable a cost-effective, increasingly freely available, comprehensive, repetitive, standardized, and objective monitoring of geomorphological characteristics and their traits. This contribution provides a state-of-the-art review for the RS-based monitoring of these characteristics and traits, by presenting examples of aeolian, fluvial, and coastal landforms. Different examples for monitoring geomorphology as a crucial discipline of geodiversity using RS are provided, discussing the implementation of RS technologies such as LiDAR, RADAR, as well as multi-spectral and hyperspectral sensor technologies. Furthermore, data products and RS technologies that could be used in the future for monitoring geomorphology are introduced. The use of spectral traits (ST) and spectral trait variation (STV) approaches with RS enable the status, changes, and disturbances of geomorphic diversity to be monitored. We focus on the requirements for future geomorphology monitoring specifically aimed at overcoming some key limitations of ecological modeling, namely: the implementation and linking of in-situ, close-range, air- and spaceborne RS technologies, geomorphic traits, and data science approaches as crucial components for a better understanding of the geomorphic impacts on complex ecosystems. This paper aims to impart multidimensional geomorphic information obtained by RS for improved utilization in biodiversity monitoring.


2020 ◽  
Author(s):  
Gustau Camps-Valls ◽  
Daniel Svendsen ◽  
Luca Martino ◽  
Adrian Pérez-Suay ◽  
Maria Piles ◽  
...  

<p>Earth observation from remote sensing satellites allows us to monitor the processes occurring on the land cover, water bodies and the atmosphere, as well as their interactions. In the last decade machine learning has impacted the field enormously due to the unprecedented data deluge and emergence of complex problems that need to be tackled (semi)automatically. One of the main problems is to perform estimation of bio-geo-physical parameters from remote sensing observations. In this model inversion setting, Gaussian processes (GPs) are one of the preferred choices for model inversion, emulation, gap filling and data assimilation. GPs do not only provide accurate predictions but also allow for feature ranking, deriving confidence intervals, and error propagation and uncertainty quantification in a principled Bayesian inference framework.</p><p>Here we introduce GPs for data analysis in general and to address the forward-inverse problem posed in remote sensing in particular. GPs are typically used for inverse modelling based on concurrent observations and in situ measurements only, or to invert model simulations. We often rely on forward radiative transfer model (RTM) encoding the well-understood physical relations to either perform model inversion with machine learning, or to replace the RTM model with machine learning models, a process known as emulation. We review four novel GP models that respect and learn the physics, and deploy useful machine learning models for remote sensing parameter retrieval and model emulation tasks. First, we will introduce a Joint GP (JGP) model that combines in situ measurements and simulated data in a single GP model for inversion. Second, we present a latent force model (LFM) for GP modelling that encodes ordinary differential equations to blend data and physical models of the system. The LFM performs multi-output regression, can cope with missing data in the time series, and provides explicit latent functions that allow system analysis, evaluation and understanding. Third, we present an Automatic Gaussian Process Emulator (AGAPE) that approximates the forward physical model via interpolation, reducing the number of necessary nodes. Finally, we introduce a new GP model for data-driven regression that respects fundamental laws of physics via dependence-regularization, and provides consistency estimates. All models attain data-driven physics-aware modeling. Empirical evidence of performance of these models will be presented through illustrative examples of vegetation/land monitoring involving multispectral (Landsat, MODIS) and passive microwave (SMOS, SMAP) observations, as well as blending data with radiative transfer models, such as PROSAIL, SCOPE and MODTRAN.</p><p><br>References</p><p>"A Perspective on Gaussian Processes for Earth Observation". Camps-Valls et al. National Science Review 6 (4) :616-618, 2019</p><p>"Physics-aware Gaussian processes in remote sensing". Camps-Valls et al. Applied Soft Computing 68 :69-82, 2018</p><p>"A Survey on Gaussian Processes for Earth Observation Data Analysis: A Comprehensive Investigation". Camps-Valls et al. IEEE Geoscience and Remote Sensing Magazine 2016</p><p> </p>


Author(s):  
Antonia Senta ◽  
Ljiljana Šerić

<span>In this paper we are investigating the possibility of usage of remote sensing satellite data, more precisely sentinel-3 OLCI and SLSTR data, for assessment of bathing water quality. In this research we used data driven approach and analysis of data in order to pinpoint aspects of remote sensing data that can be useful for bathing water quality assessment. For this purpose we collected satellite images for period from start of June till end of September of 2019 and results of in-situ measurement for the same period. Results of in-situ measurement were correlated with satellite images bands and analyzed. We propose a simple method for rapid assessment of possible deterioration of bathing water quality to be used by public health authorities for better planning of in situ measurements. Results of implementation of predictive models based on k-nearest neighbour (KNN) and decision tree (DT) are described.</span>


2001 ◽  
Vol 2001 (2) ◽  
pp. 923-927 ◽  
Author(s):  
Bill Lehr ◽  
Ron Goodman

ABSTRACT The authors use a hypothetical spill incident 10 years in the future to examine the possible advances of spill response technology. The status of remote sensing at present, as well as its capabilities a decade hence, are discussed. The authors examine spill communication improvements, speculate on the use of the Internet to disseminate spill information, and examine electronic database systems for slick management. Progress in effectively using alternative cleanup strategies such as in situ burning and dispersants are reviewed, along with some of the likely impediments to their use in spills of 2011. Spill trajectory and behavior forecasting techniques of tomorrow are discussed in light of the expected continuing advance in computer technology. The authors review the likelihood that these new capabilities would actually be implemented. The resulting picture is a mixed one. Possible positive and negative scenarios are described.


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