Assessing streetscape greenery with deep neural network using Google Street View

The importance of greenery in urban areas has traditionally been discussed from ecological and esthetic perspectives, as well as in public health and social science fields. The recent advancements in empirical studies were enabled by the combination of ‘big data’ of streetscapes and automated image...

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Bibliographic Details
Published inBreeding Science Vol. 72; no. 1; pp. 107 - 114
Main Authors Kameoka, Taishin, Uchida, Atsuhiko, Sasaki, Yu, Ise, Takeshi
Format Journal Article
LanguageEnglish
Published Tokyo Japanese Society of Breeding 01.01.2022
Japan Science and Technology Agency
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Summary:The importance of greenery in urban areas has traditionally been discussed from ecological and esthetic perspectives, as well as in public health and social science fields. The recent advancements in empirical studies were enabled by the combination of ‘big data’ of streetscapes and automated image recognition. However, the existing methods of automated image recognition for urban greenery have problems such as the confusion of green artificial objects and the excessive cost of model training. To ameliorate the drawbacks of existing methods, this study proposes to apply a patch-based semantic segmentation method for determining the green view index of certain urban areas by using Google Street View imagery and the ‘chopped picture method’. We expect that our method will contribute to expanding the scope of studies on urban greenery in various fields.
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Communicated by Sachiko Isobe
ISSN:1344-7610
1347-3735
DOI:10.1270/jsbbs.21073