4.3 Article

The continuous built-up area extracted from ISS night-time lights to compare the amount of urban green areas across European cities

相关参考文献

注意:仅列出部分参考文献,下载原文获取全部文献信息。
Article Engineering, Electrical & Electronic

Capturing the Urban Divide in Nighttime Light Images From the International Space Station

Monika Kuffer et al.

IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING (2018)

Article Environmental Sciences

NASA's Black Marble nighttime lights product suite

Miguel O. Roman et al.

REMOTE SENSING OF ENVIRONMENT (2018)

Article Environmental Studies

The interrelationship of green infrastructure and natural capital

Jonathan Chenoweth et al.

LAND USE POLICY (2018)

Article Remote Sensing

A novel method for urban area extraction from VIIRS DNB and MODIS NDVI data: a case study of Chinese cities

Qiao Zhang et al.

INTERNATIONAL JOURNAL OF REMOTE SENSING (2017)

Article Remote Sensing

VIIRS night-time lights

Christopher D. Elvidge et al.

INTERNATIONAL JOURNAL OF REMOTE SENSING (2017)

Article Environmental Sciences

Mapping Regional Urban Extent Using NPP-VIIRS DNB and MODIS NDVI Data

Run Wang et al.

REMOTE SENSING (2017)

Article Biodiversity Conservation

Urban green space availability in European cities

Nadja Kabisch et al.

ECOLOGICAL INDICATORS (2016)

Article Environmental Sciences

Impervious surface detection with nighttime photography from the International Space Station

Andrzej Z. Kotarba et al.

REMOTE SENSING OF ENVIRONMENT (2016)

Article Urban Studies

Evaluating the land use patterns of medium-sized Hellenic cities

Georgios Tsilimigkas et al.

URBAN RESEARCH & PRACTICE (2016)

Article Environmental Sciences

High-Resolution Imagery of Earth at Night: New Sources, Opportunities and Challenges

Christopher C. M. Kyba et al.

REMOTE SENSING (2015)

Article Ecology

Green justice or just green? Provision of urban green spaces in Berlin, Germany

Nadja Kabisch et al.

LANDSCAPE AND URBAN PLANNING (2014)

Article Engineering, Electrical & Electronic

A Global Human Settlement Layer From Optical HR/VHR RS Data: Concept and First Results

Martino Pesaresi et al.

IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING (2013)

Article Remote Sensing

Night on Earth: Mapping decadal changes of anthropogenic night light in Asia

Christopher Small et al.

INTERNATIONAL JOURNAL OF APPLIED EARTH OBSERVATION AND GEOINFORMATION (2013)

Article Public, Environmental & Occupational Health

An ecological study investigating the association between access to urban green space and mental health

D. Nutsford et al.

PUBLIC HEALTH (2013)

Article Environmental Sciences

TanDEM-X mission-new perspectives for the inventory and monitoring of global settlement patterns

Thomas Esch et al.

JOURNAL OF APPLIED REMOTE SENSING (2012)

Article Engineering, Environmental

Assessing Equitable Access to Urban Green Space: The Role of Engineered Water Infrastructure

Heather E. Wright Wendel et al.

ENVIRONMENTAL SCIENCE & TECHNOLOGY (2011)

Article Engineering, Electrical & Electronic

A Robust Built-Up Area Presence Index by Anisotropic Rotation-Invariant Textural Measure

Martino Pesaresi et al.

IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING (2008)

Article Ecology

Who benefits from access to green space? A case study from Sheffield, UK

Olga Barbosa et al.

LANDSCAPE AND URBAN PLANNING (2007)

Article Environmental Sciences

An integrated methodology to assess the benefits of urban green space

K De Ridder et al.

SCIENCE OF THE TOTAL ENVIRONMENT (2004)

Article Remote Sensing

Early damaged area estimation system using DMSP-OLS night-time imagery

M Kohiyama et al.

INTERNATIONAL JOURNAL OF REMOTE SENSING (2004)

Article Ecology

A hedonic valuation of urban green areas

AB Morancho

LANDSCAPE AND URBAN PLANNING (2003)

Article Ecology

A monitoring tool for the provision of accessible and attractive urban green spaces

A Van Herzele et al.

LANDSCAPE AND URBAN PLANNING (2003)

Article Computer Science, Artificial Intelligence

Random forests

L Breiman

MACHINE LEARNING (2001)