TY - CHAP
T1 - Measuring quality of walkable urban environment through experiential modeling
AU - Yamagata, Yoshiki
AU - Yoshida, Takahiro
AU - Yang, Perry P.J.
AU - Chen, Helen
AU - Murakami, Daisuke
AU - Ilmola, Leena
N1 - Publisher Copyright:
© 2020 Elsevier Inc. All rights reserved.
PY - 2020/1/1
Y1 - 2020/1/1
N2 - Smart city design should have one ultimate goal; to improve the human well-being (or quality of life) of its inhabitants. National level planning of economy and societal structures has recently paid more attention to the well-being of citizens. In order to design for well-being and smart communities, it is important to not only understand the dimensions of well-being but also to develop easy to apply measurement methods for city planners. As the first step for creating well-being in smart communities, this study presents two concrete cases where we have measured well-being. These early attempts provide us with only narrow visibility of multidimensional well-being but prove to us that mart well-being measurement systems are possible—and useful—to build. A street imagery tool and an image assessment with a machine learning technique was used for evaluating streetscapes and perceptions of heat wave tweets in Kyojima district and in Tokyo, Japan. Finally, based on our experiences in these two cases, we summarize a measurement framework for a comprehensive multidata well-being assessment system.
AB - Smart city design should have one ultimate goal; to improve the human well-being (or quality of life) of its inhabitants. National level planning of economy and societal structures has recently paid more attention to the well-being of citizens. In order to design for well-being and smart communities, it is important to not only understand the dimensions of well-being but also to develop easy to apply measurement methods for city planners. As the first step for creating well-being in smart communities, this study presents two concrete cases where we have measured well-being. These early attempts provide us with only narrow visibility of multidimensional well-being but prove to us that mart well-being measurement systems are possible—and useful—to build. A street imagery tool and an image assessment with a machine learning technique was used for evaluating streetscapes and perceptions of heat wave tweets in Kyojima district and in Tokyo, Japan. Finally, based on our experiences in these two cases, we summarize a measurement framework for a comprehensive multidata well-being assessment system.
KW - Experiential modeling
KW - Heat risk
KW - Neural image assessment
KW - Street images
KW - Walkability
KW - Well-being measurement
UR - http://www.scopus.com/inward/record.url?scp=85099979865&partnerID=8YFLogxK
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U2 - 10.1016/B978-0-12-816055-8.00012-9
DO - 10.1016/B978-0-12-816055-8.00012-9
M3 - Chapter
AN - SCOPUS:85099979865
SN - 9780128162934
SP - 373
EP - 392
BT - Urban Systems Design
PB - Elsevier
ER -