scholarly journals Study on the Changes of Urban Green Space with Remote Sensing Data: a Comparison of Nanjing and Greater Manchester

Author(s):  
Haixia Zhao ◽  
Tianyuan Zhu ◽  
Shufen Wang ◽  
Sarah Lindley
2018 ◽  
Vol 146 ◽  
pp. 436-452 ◽  
Author(s):  
Wei Chen ◽  
Huiping Huang ◽  
Jinwei Dong ◽  
Yuan Zhang ◽  
Yichen Tian ◽  
...  

2021 ◽  
Vol 4 (2) ◽  
pp. 50-54
Author(s):  
Darya D. Dajbova

The article states the necessity of urban green spaces assessment. The current methods of urban green inventory are described. The necessity of modernization of the methods taking into account the achievements of remote sensing and Geographic Information Systems is stated. The basic outline of using of free-of-charge remote sensing data and ground photography data for green spaces inventory is suggested. A case study of using said data for green space inventory of the selected area in Leninsky district of Novosibirck city, Russia, is described.


2020 ◽  
Vol 12 (22) ◽  
pp. 3845
Author(s):  
Zhiyu Xu ◽  
Yi Zhou ◽  
Shixin Wang ◽  
Litao Wang ◽  
Feng Li ◽  
...  

The real-time, accurate, and refined monitoring of urban green space status information is of great significance in the construction of urban ecological environment and the improvement of urban ecological benefits. The high-resolution technology can provide abundant information of ground objects, which makes the information of urban green surface more complicated. The existing classification methods are challenging to meet the classification accuracy and automation requirements of high-resolution images. This paper proposed a deep learning classification method for urban green space based on phenological features constraints in order to make full use of the spectral and spatial information of green space provided by high-resolution remote sensing images (GaoFen-2) in different periods. The vegetation phenological features were added as auxiliary bands to the deep learning network for training and classification. We used the HRNet (High-Resolution Network) as our model and introduced the Focal Tversky Loss function to solve the sample imbalance problem. The experimental results show that the introduction of phenological features into HRNet model training can effectively improve urban green space classification accuracy by solving the problem of misclassification of evergreen and deciduous trees. The improvement rate of F1-Score of deciduous trees, evergreen trees, and grassland were 0.48%, 4.77%, and 3.93%, respectively, which proved that the combination of vegetation phenology and high-resolution remote sensing image can improve the results of deep learning urban green space classification.


2020 ◽  
Vol 12 (5) ◽  
pp. 2144
Author(s):  
Jeroen Degerickx ◽  
Martin Hermy ◽  
Ben Somers

Urban green spaces are known to provide ample benefits to human society and hence play a vital role in safeguarding the quality of life in our cities. In order to optimize the design and management of green spaces with regard to the provisioning of these ecosystem services, there is a clear need for uniform and spatially explicit datasets on the existing urban green infrastructure. Current mapping approaches, however, largely focus on large land use units (e.g., park, garden), or broad land cover classes (e.g., tree, grass), not providing sufficient thematic detail to model urban ecosystem service supply. We therefore proposed a functional urban green typology and explored the potential of both passive (2 m-hyperspectral and 0.5 m-multispectral optical imagery) and active (airborne LiDAR) remote sensing technology for mapping the proposed types using object-based image analysis and machine learning. Airborne LiDAR data was found to be the most valuable dataset overall, while fusion with hyperspectral data was essential for mapping the most detailed classes. High spectral similarities, along with adjacency and shadow effects still caused severe confusion, resulting in class-wise accuracies <50% for some detailed functional types. Further research should focus on the use of multi-temporal image analysis to fully unlock the potential of remote sensing data for detailed urban green mapping.


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