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George Grekousis

Bio: George Grekousis is an academic researcher from Sun Yat-sen University. The author has contributed to research in topics: Fuzzy clustering & Socioeconomic status. The author has an hindex of 13, co-authored 25 publications receiving 615 citations. Previous affiliations of George Grekousis include University of Thessaly & State University of New York College of Environmental Science and Forestry.

Papers
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Journal ArticleDOI
TL;DR: Land-cover (LC) products, especially at the regional and global scales, comprise essential data for a wide range of environmental studies affecting biodiversity, climate, and human health by summarizing 23 global and 41 regional LC products.
Abstract: Land-cover LC products, especially at the regional and global scales, comprise essential data for a wide range of environmental studies affecting biodiversity, climate, and human health. This review builds on previous compartmentalized efforts by summarizing 23 global and 41 regional LC products. Characteristics related to spatial resolution, overall accuracy, time of data acquisition, sensor used, classification scheme and method, support for LC change detection, download location, and key corresponding references are provided. Operational limitations and uncertainties are discussed, mostly as a result of different original modelling outcomes. Upcoming products are presented and future prospects towards increasing usability of different LC products are offered. Despite the common realization of product usage by non-experts, the remote-sensing community has not fully addressed the challenge. Algorithmic development for the effective representation of inherent product limitations to facilitate proper usage by non-experts is necessary. Further emphasis should be placed on international coordination and harmonization initiatives for compatible LC product generation. We expect the applicability of current and future LC products to increase, especially as our environmental understanding increases through multi-temporal studies.

187 citations

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TL;DR: In this article, the authors explore biopsychosocial pathways linking exposure to neighbourhood greenness to mental wellbeing using survey data collected from 35 neighbourhoods of Guangzhou, China, using the Normalized Difference Vegetation Index (NDVI) as the surrogate for residential exposure to greenness, thereby enabling the comparison between China and other countries.

139 citations

Journal ArticleDOI
01 Feb 2013-Cities
TL;DR: An artificial intelligence approach integrated with geographical information systems (GISs) for modeling urban evolution using fuzzy logic and neural networks to provide a synthetic spatiotemporal methodology for the analysis, prediction and interpretation of urban growth.

122 citations

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TL;DR: Assessment of perceptions of the built environment with street view images of 1231 older adults in 48 neighborhoods in the Haidian District, Beijing, China shows that perceived safety was significantly associated with both the physical and mental health outcomes.

88 citations

Journal ArticleDOI
TL;DR: This study provides a statistical review of 140 papers on studies that employed ANNs in urban geography between 1997 and 2016 and performs a quantitative meta-analysis using non-parametric bootstrapping on ANNs' overall accuracy achieved.

84 citations


Cited by
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Journal Article
TL;DR: The results of the Forest Resources Assessment 2000 carried out by FAO are synthetically presented and discussed in this paper, which shows a general deceleration of the rate of net deforestation, that currently involves around 9 million hectares every year.
Abstract: The results of the Forest Resources Assessment 2000 carried out by FAO are synthetically presented and discussed. The world forest coverage is estimated equal to 38.6 million km 2 . The comparison of the estimates from the period 1990-2000 with those from the period 1980-1990 points out a certain general deceleration of the rate of net deforestation, that currently involves around 9 million hectares every year. However, the annua1 loss of tropical forests is still very large, while temperate and borea1 forests are in expansion. Overall, FRA2000 produced a relevant effort to compensate the existing technical, institutional and financial constraints and shortcomings for monitoring the world forest resources. The need to increase the quality and the frequency of forest surveys, both at national and international levels, s t a stands as a major issue to cope with.

600 citations

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TL;DR: A statistical meta-analysis of the past 15 years of research on supervised per-pixel image classification revealed that inclusion of texture information yielded the greatest improvement in overall accuracy of land-cover classification with an average increase of 12.1%.

410 citations

Journal ArticleDOI
TL;DR: The MODIS Collection 6 Global Land Cover Type product (CLP 6) as discussed by the authors uses a hierarchical classification model where the classes included in each level of the hierarchy reflect structured distinctions between land cover properties.

367 citations

Journal ArticleDOI
TL;DR: The 2016 National Land Cover Database (NLCD) product suite as discussed by the authors provides important new information on land change patterns across CONUS from 2001 to 2016, including land cover, urban imperviousness, and tree, shrub, herbaceous and bare ground fractional percentages.
Abstract: The 2016 National Land Cover Database (NLCD) product suite (available on www.mrlc.gov ), includes Landsat-based, 30 m resolution products over the conterminous (CONUS) United States (U.S.) for land cover, urban imperviousness, and tree, shrub, herbaceous and bare ground fractional percentages. The release of NLCD 2016 provides important new information on land change patterns across CONUS from 2001 to 2016. For land cover, seven epochs were concurrently generated for years 2001, 2004, 2006, 2008, 2011, 2013, and 2016. Products reveal that land cover change is significant across most land cover classes and time periods. The land cover product was validated using existing reference data from the legacy NLCD 2011 accuracy assessment, applied to the 2011 epoch of the NLCD 2016 product line. The legacy and new NLCD 2011 overall accuracies were 82% and 83%, respectively, (standard error (SE) was 0.5%), demonstrating a small but significant increase in overall accuracy. Between 2001 and 2016, the CONUS landscape experienced significant change, with almost 8% of the landscape having experienced a land cover change at least once during this period. Nearly 50% of that change involves forest, driven by change agents of harvest, fire, disease and pests that resulted in an overall forest decline, including increasing fragmentation and loss of interior forest. Agricultural change represented 15.9% of the change, with total agricultural spatial extent showing only a slight increase of 4778 km2, however there was a substantial decline (7.94%) in pasture/hay during this time, transitioning mostly to cultivated crop. Water and wetland change comprised 15.2% of change and represent highly dynamic land cover classes from epoch to epoch, heavily influenced by precipitation. Grass and shrub change comprise 14.5% of the total change, with most change resulting from fire. Developed change was the most persistent and permanent land change increase adding almost 29,000 km2 over 15 years (5.6% of total CONUS change), with southern states exhibiting expansion much faster than most of the northern states. Temporal rates of developed change increased in 2001–2006 at twice the rate of 2011–2016, reflecting a slowdown in CONUS economic activity. Future NLCD plans include increasing monitoring frequency, reducing latency time between satellite imaging and product delivery, improving accuracy and expanding the variety of products available in an integrated database.

332 citations

Journal ArticleDOI
TL;DR: This paper presents a methodology for the fully automatic production of land cover maps at country scale using high resolution optical image time series which is based on supervised classification and uses existing databases as reference data for training and validation.
Abstract: A detailed and accurate knowledge of land cover is crucial for many scientific and operational applications, and as such, it has been identified as an Essential Climate Variable. This accurate knowledge needs frequent updates. This paper presents a methodology for the fully automatic production of land cover maps at country scale using high resolution optical image time series which is based on supervised classification and uses existing databases as reference data for training and validation. The originality of the approach resides in the use of all available image data, a simple pre-processing step leading to a homogeneous set of acquisition dates over the whole area and the use of a supervised classifier which is robust to errors in the reference data. The produced maps have a kappa coefficient of 0.86 with 17 land cover classes. The processing is efficient, allowing a fast delivery of the maps after the acquisition of the image data, does not need expensive field surveys for model calibration and validation, nor human operators for decision making, and uses open and freely available imagery. The land cover maps are provided with a confidence map which gives information at the pixel level about the expected quality of the result.

321 citations