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Knowledge-infused Contrastive Learning for Urban Imagery-based Socioeconomic Prediction

  • Yu Liu
  • , Xin Zhang
  • , Jingtao Ding
  • , Yanxin Xi
  • , Yong Li

Forskningsoutput: Kapitel i bok/rapport/konferenshandlingKonferensbidragVetenskapligPeer review

Sammanfattning

Monitoring sustainable development goals requires accurate and timely socioeconomic statistics, while ubiquitous and frequently-updated urban imagery in web like satellite/street view images has emerged as an important source for socioeconomic prediction. Especially, recent studies turn to self-supervised contrastive learning with manually designed similarity metrics for urban imagery representation learning and further socioeconomic prediction, which however suffers from effectiveness and robustness issues. To address such issues, in this paper, we propose a Knowledge-infused Contrastive Learning (KnowCL) model for urban imagery-based socioeconomic prediction. Specifically, we firstly introduce knowledge graph (KG) to effectively model the urban knowledge in spatiality, mobility, etc., and then build neural network based encoders to learn representations of an urban image in associated semantic and visual spaces, respectively. Finally, we design a cross-modality based contrastive learning framework with a novel image-KG contrastive loss, which maximizes the mutual information between semantic and visual representations for knowledge infusion. Extensive experiments of applying the learnt visual representations for socioeconomic prediction on three datasets demonstrate the superior performance of KnowCL with over 30% improvements on R2 compared with baselines. Especially, our proposed KnowCL model can apply to both satellite and street imagery with both effectiveness and transferability achieved, which provides insights into urban imagery-based socioeconomic prediction.

Originalspråkengelska
Titel på värdpublikationACM Web Conference 2023 - Proceedings of the World Wide Web Conference, WWW 2023
Antal sidor11
Förlag Association for Computing Machinery, Inc.
Utgivningsdatum30 apr. 2023
Sidor4150-4160
ISBN (elektroniskt)978-1-4503-9416-1
DOI
StatusPublicerad - 30 apr. 2023
MoE-publikationstypA4 Artikel i en konferenspublikation
EvenemangWorld Wide Web Conference - Austin, Förenta Staterna (USA)
Varaktighet: 30 apr. 20234 maj 2023

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  • 113 Data- och informationsvetenskap

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