4.7 Article

What Makes Paris Look like Paris?

期刊

ACM TRANSACTIONS ON GRAPHICS
卷 31, 期 4, 页码 -

出版社

ASSOC COMPUTING MACHINERY
DOI: 10.1145/2185520.2185597

关键词

data mining; visual summarization; reference art; big data; computational geography; visual perception

资金

  1. NDSEG
  2. Google
  3. NSF [IIS0905402]
  4. EIT-ICT
  5. ONR [N000141010934, N000141010766]
  6. MSR-INRIA

向作者/读者索取更多资源

Given a large repository of geotagged imagery, we seek to automatically find visual elements, e. g. windows, balconies, and street signs, that are most distinctive for a certain geo-spatial area, for example the city of Paris. This is a tremendously difficult task as the visual features distinguishing architectural elements of different places can be very subtle. In addition, we face a hard search problem: given all possible patches in all images, which of them are both frequently occurring and geographically informative? To address these issues, we propose to use a discriminative clustering approach able to take into account the weak geographic supervision. We show that geographically representative image elements can be discovered automatically from Google Street View imagery in a discriminative manner. We demonstrate that these elements are visually interpretable and perceptually geo-informative. The discovered visual elements can also support a variety of computational geography tasks, such as mapping architectural correspondences and influences within and across cities, finding representative elements at different geo-spatial scales, and geographically-informed image retrieval.

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