Waishan Qiu
Orcid: 0000-0001-6461-7243
According to our database1,
Waishan Qiu
authored at least 11 papers
between 2018 and 2024.
Collaborative distances:
Collaborative distances:
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Bibliography
2024
Day-to-Night Street View Image Generation for 24-Hour Urban Scene Auditing Using Generative AI.
J. Imaging, May, 2024
Predicting Neighborhood-Level Residential Carbon Emissions from Street View Images Using Computer Vision and Machine Learning.
Remote. Sens., April, 2024
Measuring the Spatial-Temporal Heterogeneity of Helplessness Sentiment and Its Built Environment Determinants during the COVID-19 Quarantines: A Case Study in Shanghai.
ISPRS Int. J. Geo Inf., April, 2024
2023
Identifying Urban Park Events through Computer Vision-Assisted Categorization of Publicly-Available Imagery.
ISPRS Int. J. Geo Inf., October, 2023
The Role of Subjective Perceptions and Objective Measurements of the Urban Environment in Explaining House Prices in Greater London: A Multi-Scale Urban Morphology Analysis.
ISPRS Int. J. Geo Inf., June, 2023
Drivers or Pedestrians, Whose Dynamic Perceptions Are More Effective to Explain Street Vitality? A Case Study in Guangzhou.
Remote. Sens., February, 2023
2022
Associations between Street-View Perceptions and Housing Prices: Subjective vs. Objective Measures Using Computer Vision and Machine Learning Techniques.
Remote. Sens., 2022
Quantifying Association Between Street-Level Urban Features and Crime Distribution Around Manhattan Subway Entrances.
Proceedings of the Advanced Data Mining and Applications - 18th International Conference, 2022
The Coherence and Divergence Between the Objective and Subjective Measurement of Street Perceptions for Shanghai.
Proceedings of the Advanced Data Mining and Applications - 18th International Conference, 2022
2021
Subjectively Measured Streetscape Perceptions to Inform Urban Design Strategies for Shanghai.
ISPRS Int. J. Geo Inf., 2021
2018
A novel method for predicting and mapping the presence of sun glare using Google Street View.
CoRR, 2018