大数据与城市规划 (11).pdf
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1、RESEARCH ARTICLEHow green are the streets?An analysis forcentral areas of Chinese cities using TencentStreet ViewYing Long1*,Liu Liu21 School of Architecture and Hang Lung Center for Real Estate,Tsinghua University,Beijing,China,2 ChinaAcademy of Urban Planning and Design,Shanghai,China*AbstractExte
2、nsive evidence has revealed that street greenery,as a quality-of-life component,isimportant for oxygen production,pollutant absorption,and urban heat island effect mitiga-tion.Determining how green our streets are has always been difficult given the time andmoney consumed using conventional methods.
3、This study proposes an automatic methodusing an emerging online street-view service to address this issue.This method was used toanalyze street greenery in the central areas(28.3 km2each)of 245 major Chinese cities;this differs from previous studies,which have investigated small areas in a given cit
4、y.Sucha city-system-level study enabled us to detect potential universal laws governing streetgreenery as well as the impact factors.We collected over one million Tencent Street Viewpictures and calculated the green view index for each picture.We found the following rules:(1)longer streets in more e
5、conomically developed and highly administrated cities tended tobe greener;(2)cities in western China tend to have greener streets;and(3)the aggregatedgreen view indices at the municipal level match with the approved National Garden Cities ofChina.These findings can prove useful for drafting more app
6、ropriate policies regarding plan-ning and engineering practices for street greenery.1.IntroductionAs one of the most prominent colors in nature,green has been an everlasting beloved color ofhumans,and the“garden city”advocated by 1 is among the most famous planning theories.According to 2,green spac
7、es offer significant potential for restoration,correspond to theinnate human tendency to focus on life and lifelike processes,and promote behaviors thatboost well-being;thus,increasing the provision and utilization of urban green spaces can pro-mote stress reduction,happiness,health,and well-being a
8、mong humans.As an essential aspectof green-city implementation,green coverage at various scalesat the block level(green landarea divided by block area),for example,or citywide(total green land area divided by the citysurban land area)is a mandatory element of spatial plans for promoting a high quali
9、ty of life.As a result of partial planning implementation and the diverse composition of green spaces,PLOS ONE|DOI:10.1371/journal.pone.0171110February 14,20171/18a1111111111a1111111111a1111111111a1111111111a1111111111OPENACCESSCitation:LongY,LiuL(2017)Howgreenarethestreets?Ananalysisforcentralareas
10、ofChinesecitiesusingTencentStreetView.PLoSONE12(2):e0171110.doi:10.1371/journal.pone.0171110Editor:XiaoleiMa,BeihangUniversity,CHINAReceived:July10,2016Accepted:January15,2017Published:February14,2017Copyright:2017Long,Liu.ThisisanopenaccessarticledistributedunderthetermsoftheCreativeCommonsAttribut
11、ionLicense,whichpermitsunrestricteduse,distribution,andreproductioninanymedium,providedtheoriginalauthorandsourcearecredited.DataAvailabilityStatement:Allrelevantdataarewithinthepaper.Funding:ThefirstauthorwouldliketoacknowledgethefundingoftheNationalNaturalScienceFoundationofChina(No.51408039).Comp
12、etinginterests:Theauthorshavedeclaredthatnocompetinginterestsexist.green coverage in planning drawings does not directly correspond to the total greenery in real-ity.This is one reason why visual greenery has been extensively discussed in the research com-munity and is suggested for use in practice.
13、Although not required in spatial plans,streetgreeneryas the focus of this study and a key indicator for evaluating urban form at the city-design levelis important for citizens quality of life(especially for pedestrians in daily life);however,this has not been sufficiently studied due to a lack of fi
14、ne-scale data.Understanding how green our streets are has never been easy.Using the conventionalmethods,it is generally time consuming and expensive.To address this issue,we developed anautomatic method using a street-view service while also borrowing and modifying ideas fromexisting studies such as
15、 35.The green color ratio in street views(termed“green view index”in this paper)which reflects objective city(as well as rural in most street-view products)street(and road)landscapeswas selected as the proxy for linking with street greenery in thisstudy,which falls under the umbrella of visual green
16、ery studies.Different from online geo-tagged photos,which reflect city images captured subjectively by photographers,street viewobjectively depicts the true urban landscape.This is another reason why we chose street viewto understand street visual greenery in this study.Today in China,academic studi
17、es areincreasingly using open data from social networks,commercial websites,and official channelsto understand city systems and urban structure,as well as human mobility and activity(see 6for a review).To the best of our knowledge,this is one of the first studies to analyze streetgreenery in a large
18、 number of cities using street view.This paper is organized as follows:To illustrate the research context,section 2 reviewsrelated areas such as visual greenery and using street-view pictures for urban studies.Sections3 and 4 introduce the study area,data,and research methods.Section 5 presents the
19、researchresults in various aspectssuch as the overall pattern,intercity rankings and analysis,andintracity pattern analysisas well as the validation of the results.In the final section,we dis-cuss potential applications,academic contribution,research biases,and future plans.2.Literature review2.1 Us
20、ing street-view pictures in urban studiesSystems like Google Street View and Bing Maps Streetside enable users to virtually visit cities(on the streets or even indoors)by navigating immersive 360 panoramas.There are variousendeavors related to Google Street View(GSV)image recognition,including 3-D c
21、ity modelconstruction 7,commercial-entity identification 8,real-time text localization and recogni-tion 9,and layer interpretation for ground,pedestrians,vehicles,buildings,and sky 10.In addition to these existing studies in the field of computer science,there are related stud-ies in urban geography
22、,regional science,urban studies,and urban planning.Rundle et al.11suggest that GSV can be used to audit neighborhood environments by checking the concor-dance between GSV analysis and field surveys.Odgers et al.12 observed childrens neighbor-hoods using GSV and found it to be a reliable and cost-eff
23、ective tool.Kelly et al.13 used GSVto audit built environments and also found it to be a reliable method.Hwang and Sampson14 identified visible clues of neighborhood gentrification using GSV for systematic socialobservation.Carrasco-Hernandez 15 reconstructed building geometries and urban sky viewfa
24、ctors using the GSV image database.In general,street view has proven to be an effective andreliable tool for measuring built environments on various scales,such as streets and neighbor-hoods.The aforementioned studies were all conducted manually by looking at street-viewimages,not by automatic means
25、.This time-consuming process places constraints on usingstreet view to analyze large geographical areas.We did find an investigation 16 thatHow green are the streets in Chinese cities?PLOS ONE|DOI:10.1371/journal.pone.0171110February 14,20172/18combined crowdsourcing techniques with GSV to identify
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