Representing place locales using scene elements
Publication in refereed journal

香港中文大學研究人員
替代計量分析
.

其它資訊
摘要Locale is one of the basic elements of place, referring to the physical settings and visual appearance of a place. Understanding and representing a locale is of great importance in terms of human perception and human activity. However, taking a quantitative measurement of the visual appearance of urban environment has proven to be challenging because visual information is inherently ambiguous and semantically impoverished. To mitigate this issue, this paper employs street-level images as the proxy for urban physical appearance, utilizes the recently developed image semantic segmentation techniques to parse an urban scene into scene elements, and proposes a framework for locale representation using scene elements. The framework is composed of two major components: street scene ontology and street visual descriptor, which are aimed at street scene qualitative understanding and quantitative representation respectively. A case study is developed to demonstrate the application and advantage of the street scene ontology and street visual descriptor. A series of quantitative analyses demonstrates the ability and great potential of the framework for investigating the connections between place and other socioeconomic factors.
著者Zhang Fan, Zhang Ding, Liu Yu, Lin Hui
期刊名稱Computers, Environment and Urban Systems
出版年份2018
月份9
卷號71
頁次153 - 164
國際標準期刊號0198-9715
電子國際標準期刊號1873-7587
語言美式英語
關鍵詞Scene ontology, Quantitative representation, Street-level images, Deep learning, Place formalization

上次更新時間 2021-09-01 於 01:52