Submitted:
02 April 2025
Posted:
02 April 2025
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Abstract
Keywords:
1. Introduction
2. Materials and Methods
2.1. Literature Search Strategy
2.2. Data Extraction and Synthesis
2.3. Theoretical Framing
2.4. Limitations
3. Urban Remote Sensing: Understanding Cities from Afar
3.1. Early Applications
3.1.1. Evolution from Low-Resolution Imagery to Advanced Satellite Systems
3.1.2. Key Contributions to Urban Planning and Ecological Monitoring
3.2. Technologic Advancements
3.2.1. Emergence of Hyperspectral and LiDAR Data
3.2.2. Machine Learning Applications for Urban Feature Extraction
3.3. Social and Ecological Focus
4. The Big Data Era: Social Sensing as a New Paradigm
4.1. Conceptual Framework of Social Sensing
4.1.1. Human as Sensors: A Fundamental Paradigm Shift
4.1.2. From Unstructured Data to Actionable Urban Intelligence
4.1.3. Integrative Framework: Bridging Physical and Social Dimensions
4.2. Data Modalities
4.2.1. Geolocated Social Media Platforms
4.2.2. Mobile Phone and GPS Trajectory Data
4.2.3. Points of Interest (POI) and Volunteered Geographic Information (VGI)
4.3. Integrative Applications: Advancing Urban Science Through Social Sensing
4.3.1. From Supplementary Data to Central Urban Intelligence
4.3.2. Enhancing Urban Governance Through Real-Time Decision-Making
4.3.3. Addressing Complex Urban Challenges: Sustainability, Equity, and Public Health
4.3.4. Remaining Challenges and Future Directions
5. Integration of Remote and Social Sensing: Towards a New Urban Observational Framework
5.1. Theoretical Synergies
5.2. Hybrid Methodologies
5.3. Challenges and Constraints
6. Towards a Theoretical Advancement in Urban Remote Sensing
6.1. Rethinking Urban Observations
6.2. Building New Metrics for a Hybrid Paradigm
6.3. Toward Systems-Based Urban Sensing
6.4. Policy Implications
7. Conclusions
Data Availability Statement
Conflicts of Interest
References
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