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Finding "retro" places in Japan: crowd-sourced urban ambience estimation

Published: 19 November 2021 Publication History

Abstract

Understanding the ambience of an area is essential for making various geographical decisions. This kind of ambience (e.g., "beautiful," "quiet," "happy," "retro," etc.) is due to not only physical features, such as scenery and functionality, but also subjective information based on people's perceptions and experiences. Although scholars in various fields have attempted to quantitatively measure subjective human experiences, the amount of location-based subjective data varies depending on the area. Thus, we have proposed a method to quantify individuals' perceptions of urban ambiences, as well as a means to anticipate these perceptions from landscape images. In this study, we have focused on the "retro" ambience of old Japanese cities. First, we used crowdsourcing to assign ambience scores to the cities of Nara and Kyoto, the ancient capitals of Japan, based on the level of perception of retro people in the landscape images. Further, we trained a deep learning model to estimate the ambience score of unknown landscape images using previously labelled data. Finally, we discussed the utility of our method for routing applications and exploring its generalizability across different cities.

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  • (2022)LocalRec 2021 Workshop Report: The Fifth ACM SIGSPATIAL Workshop on Location-Based Recommendations, Geosocial Networks and GeoadvertisingSIGSPATIAL Special10.1145/3578484.357848613:3(1-5)Online publication date: 23-Dec-2022

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cover image ACM Conferences
LocalRec '21: Proceedings of the 5th ACM SIGSPATIAL International Workshop on Location-based Recommendations, Geosocial Networks and Geoadvertising
November 2021
66 pages
ISBN:9781450391009
DOI:10.1145/3486183
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Publication History

Published: 19 November 2021

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Author Tags

  1. crowdsourcing
  2. deep learning
  3. route recommendation
  4. social sensor
  5. tourism information
  6. urban informatics

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  • JSPS

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Overall Acceptance Rate 17 of 26 submissions, 65%

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  • (2022)LocalRec 2021 Workshop Report: The Fifth ACM SIGSPATIAL Workshop on Location-Based Recommendations, Geosocial Networks and GeoadvertisingSIGSPATIAL Special10.1145/3578484.357848613:3(1-5)Online publication date: 23-Dec-2022

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