The Wetland Map Validation for Ukraine

Author(s):  
Andrii Shelestov ◽  
Hanna Yailymova ◽  
Bohdan Yailymov ◽  
Artem Chyrkov
Keyword(s):  
Author(s):  
Sagar Ravi Bhavsar ◽  
Andrei Vatavu ◽  
Timo Rehfeld ◽  
Gunther Krehl

2020 ◽  
Vol 13 (2) ◽  
pp. 564
Author(s):  
Renata Cristina Mafra ◽  
Mayara Maezano Faita Pinheiro ◽  
Rejane Ennes Cicerelli ◽  
Lucas Prado Osco ◽  
Marcelo Rodrigo Alves ◽  
...  

O processo erosivo é um fenômeno que acontece devido às condições climáticas ou uso inadequado da terra. O mapeamento dos níveis de vulnerabilidade à erosão de uma área pode ocorrer usando diferentes modelos de inferência geográfica. No entanto, definir o método apropriado é ainda uma questão a ser respondida. Este trabalho apresenta uma abordagem de validação de mapa de vulnerabilidade à erosão elaborado por diferentes métodos de inferência. Como estudo de caso, adotou-se uma bacia hidrográfica e considerou-se os seguintes critérios: geomorfologia, pedologia, declividade, densidade de drenagem e cobertura da terra. Dentre os métodos testados tem-se: Combinação Linear Ponderada (CLP) e três operadores Fuzzy: soma algébrica, produto algébrico e gamma, variando o expoente “γ” entre os valores 0,4; 0,6 e 0,8. Os pesos dos critérios foram definidos com base no Processo Analítico Hierárquico. A validação dos mapas ocorreu usando 1902 pontos, sendo 951 pontos de erosão na área, definidos com base em imagens do Google Earth Pro, e 951 pontos sem erosão, gerados aleatoriamente no QGIS 3.8. O modelo de regressão logística foi usado parar comparar o desempenho de cada mapa ao apontar as áreas com maior e menor grau de vulnerabilidade. A melhor modelagem foi alcançada com o operador Fuzzy gamma quando parametrizado com γ = 0,6. Embora o CLP seja a abordagem recorrente em estudos ambientais envolvendo inferência geográfica, nossos resultados demostram que outros operadores podem produzir resultados mais próximos aos encontrados com a realidade observada em campo.  Machine learning erosion and vulnerability map validation A B S T R A C TErosion is a natural phenomenon that happens in all ecosystems, whether due to weather conditions or inappropriate land use. Mapping the erosion vulnerability levels of an area can occur using different methods of geographic inference. However, defining the appropriate method is still a question to be answered. This paper presents an erosion vulnerability map validation approach elaborated by different inference methods. As a case study, a watershed was adopted and the following criteria were considered: geomorphology, pedology, slope, drainage density and land cover. Among the tested methods are: Weighted Linear Combination (WLC) and three Fuzzy operators: algebraic sum, algebraic product and gamma, varying the exponent “γ” between the values 0.4; 0.6 and 0.8. The weights of the criteria were defined based on the Hierarchical Analytical Process. The validation of the maps took place using 1902 points, with 951 erosion points in the area defined based on Google Earth Pro images and 951 points without erosion randomly generated in QGIS 3.8. The logistic regression model was used to compare the performance of each map by pointing out the areas with the highest and lowest degree of vulnerability. The best modeling was achieved with the Fuzzy gamma operator when parameterized with γ = 0.6. Although WLC is the recurring approach in environmental studies involving geographic inference, our results show that other operators can produce results closer to those encountered with the reality observed in the field.Keywords: Geographical inference; multicriteria analysis; data validation; environmental impact.


1997 ◽  
Vol 22 (2) ◽  
pp. 159-178 ◽  
Author(s):  
G Dudek ◽  
M Jenkin ◽  
E Milios ◽  
D Wilkes
Keyword(s):  

2021 ◽  
Author(s):  
Dongyang Hou ◽  
Jun Chen ◽  
Hao Wu ◽  
Songnian Li ◽  
Feifei Chen ◽  
...  

Sample data plays an important role in land cover (LC) map validation. Traditionally, they are collected through field survey or image interpretation, either of which is costly, labor-intensive and time-consuming. In recent years, massive geo-tagged texts are emerging on the web and they contain valuable information for LC map validation. However, this kind of special textual data has seldom been analyzed and used for supporting LC map validation. This paper examines the potential of geo-tagged web texts as a new cost-free sample data source to assist LC map validation and proposes an active data collection approach. The proposed approach uses a customized deep web crawler to search for geo-tagged web texts based on land cover-related keywords and string-based rules matching. A data transformation based on buffer analysis is then performed to convert the collected web texts into LC sample data. Using three provinces and three municipalities directly under the Central Government in China as study areas, geo-tagged web texts were collected to validate artificial surface class of China’s 30-meter global land cover datasets (GlobeLand30-2010). A total of 6283 geo-tagged web texts were collected at a speed of 0.58 texts per second. The collected texts about built-up areas were transformed into sample data. User’s accuracy of 82.2% was achieved, which is close to that derived from formal expert validation. The preliminary results show that geo-tagged web texts are valuable ancillary data for LC map validation and the proposed approach can improve the efficiency of sample data collection.


2015 ◽  
Vol 12 (10) ◽  
pp. 943-946 ◽  
Author(s):  
Benjamin A Barad ◽  
Nathaniel Echols ◽  
Ray Yu-Ruei Wang ◽  
Yifan Cheng ◽  
Frank DiMaio ◽  
...  

2011 ◽  
Vol 72 (8) ◽  
pp. 582-589 ◽  
Author(s):  
Piotr Mioduszewski ◽  
Jerzy A. Ejsmont ◽  
Jan Grabowski ◽  
Daniel Karpiński

2018 ◽  
Author(s):  
Peter A. Hook

This article proposes, exemplifies, and validates the use of course-subject co-occurrence (CSCO) data to generate topic maps of an academic discipline. A CSCO event is when two course-subjects are taught in the same academic year by the same teacher. 61,856 CSCO events were extracted from the 2010-11 directory of the American Association of Law Schools and used to visualize the structure of law school education in the United States. Different normalization, ordination (layout), and clustering algorithms were compared and the best performing algorithm of each type was used to generate the final map. Validation studies demonstrate that CSCO produces topic maps that are consistent with expert opinion and four other indicators of the topical similarity of law school course-subjects. This research is the first to use CSCO to produce a visualization of a domain. It is also the first to use an expanded, multipart gold-standard to evaluate the validity of domain maps and the intermediate steps in their creation. It is suggested that the framework used herein may be adopted for other studies that compare different inputs of a domain map in order to empirically derive the best maps as measured against extrinsic sources of topical similarity (gold standards). Cite as: Hook, P. A. (2017). Using Course-Subject Co-Occurrence (CSCO) to Reveal the Structure of an Academic Discipline: A Framework to Evaluate Different Inputs of a Domain Map. Journal of the Association for Information Science and Technology, 68(1), 182-196.


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