2022
DOI: 10.1016/j.landurbplan.2022.104358
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Subjective or objective measures of street environment, which are more effective in explaining housing prices?

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Cited by 84 publications
(82 citation statements)
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References 74 publications
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“…SVI data is commonly provided by commercial services such as Google Street View (GSV), and crowdsourced platforms such as Mapillary and KartaView. SVI has enabled and enhanced a wide spectrum of applications in urban-related topics including spatial data infrastructure, public health, urban greenery, transportation, mobility, perception, socioeconomics, and so on (Branson et al, 2018;Cheng et al, 2018;Zhang et al, 2019a;Pelizari et al, 2021;Li et al, 2021;Yao et al, 2021;Inoue et al, 2022;Qiu et al, 2022;Hosseini et al, 2022;Byun and Kim, 2022;Guan et al, 2022).…”
Section: Street View Imagery For Lcz Classificationmentioning
confidence: 99%
“…SVI data is commonly provided by commercial services such as Google Street View (GSV), and crowdsourced platforms such as Mapillary and KartaView. SVI has enabled and enhanced a wide spectrum of applications in urban-related topics including spatial data infrastructure, public health, urban greenery, transportation, mobility, perception, socioeconomics, and so on (Branson et al, 2018;Cheng et al, 2018;Zhang et al, 2019a;Pelizari et al, 2021;Li et al, 2021;Yao et al, 2021;Inoue et al, 2022;Qiu et al, 2022;Hosseini et al, 2022;Byun and Kim, 2022;Guan et al, 2022).…”
Section: Street View Imagery For Lcz Classificationmentioning
confidence: 99%
“…• Visual Order: Based on the consistency of physical elements including arrangement of buildings, paving materials, broken glass, character and scale (Ewing et al, 2006, Ewing & Handy, 2009, Griew et al, 2013, Rundle et al, 2011, Qiu et al, 2022 • Aesthetic (Imageability): Based on the distinctness in arrangement of physical elements and whether it captures emotions, impressions and/or attention (Ewing et al, 2006;Ewing & Handy, 2009;Ma et al 2021;Qiu et al, 2021) • Ecology (Greenness): Based on the proportionality between physical elements including vegetation and building facade (Ewing & Handy, 2009;Ma et al, 2021) • Enclosure: Based on the proportionality between vertical height of physical elements and horizontal width of the space (Ewing et al, 2006;Ewing & Handy, 2009;Salesses et al, 2013;Dubey et al, 2016;Ma et al 2021;Qiu et al, 2021) • Complexity: Based on the diversity of physical elements including user numbers, architectural and landscape variety (Ewing et al, 2006;Ewing & Handy, 2009;Salesses et al, 2013;Dubey et al, 2016;Qiu et al, 2021) • Human Scale: Based on the proportionality of between physical elements and humans and the speed that humans move (Ewing et al, 2006;Ewing & Handy, 2009;Salesses et al, 2013;Dubey et al, 2016;Qiu et al, 2021).…”
Section: Urban Design Qualitiesmentioning
confidence: 99%
“…The final image processing was the application of ML in determining if an SVI portrays certain abstract qualities such as order, aesthetic, ecology, enclosure, complexity and human scale (Ewing et al, 2006, Ewing and Handy, 2009, Griew et al, 2013, Qiu et al, 2021, Qiu et al, 2022, Rundle et al, 2011. The ML process of comparing the elements and converting the preferences to street scores used Microsoft's skill based training system, Truskill algorithm, based on a series of surveys of 300 images from a number of university students, details of which can be found in Qiu et al, 2021. Once the images process was complete, the values assigned to each of the SVI were compiled for data manipulation.…”
Section: Image Processingmentioning
confidence: 99%
“…• Visual Order: Based on the consistency of physical elements including arrangement of buildings, paving materials, broken glass, character and scale , Griew et al, 2013, Rundle et al, 2011, Qiu et al, 2022 • Aesthetic (Imageability): Based on the distinctness in arrangement of physical elements and whether it captures emotions, impressions and/or attention • Ecology (Greenness): Based on the proportionality between physical elements including vegetation and building facade • Enclosure: Based on the proportionality between vertical height of physical elements and horizontal width of the space Dubey et al, 2016; • Complexity: Based on the diversity of physical elements including user numbers, architectural and landscape variety Dubey et al, 2016; • Human Scale: Based on the proportionality of between physical elements and humans and the speed that humans move Dubey et al, 2016;.…”
Section: Urban Design Qualitiesmentioning
confidence: 99%
“…The final image processing was the application of ML in determining if an SVI portrays certain abstract qualities such as order, aesthetic, ecology, enclosure, complexity and human scale , Griew et al, 2013, Qiu et al, 2022, Rundle et al, 2011. The ML process of comparing the elements and converting the preferences to street scores used Microsoft's skill based training system, Truskill algorithm, based on a series of surveys of 300 images from a number of university students, details of which can be found in Once the images process was complete, the values assigned to each of the SVI were compiled for data manipulation.…”
Section: Image Processingmentioning
confidence: 99%