Parking, Perception, and Retail: Street-Level Determinants of Community Vitality in Harbin
Journal:
arXiv
Published Date:
Jun 5, 2025
Abstract
The commercial vitality of community-scale streets in Chinese cities is
shaped by complex interactions between vehicular accessibility, environmental
quality, and pedestrian perception. This study proposes an interpretable,
image-based framework to examine how street-level features -- including parked
vehicle density, greenery, cleanliness, and street width -- impact retail
performance and user satisfaction in Harbin, China. Leveraging street view
imagery and a multimodal large language model (VisualGLM-6B), we construct a
Community Commercial Vitality Index (CCVI) from Meituan and Dianping data and
analyze its relationship with spatial attributes extracted via GPT-4-based
perception modeling. Our findings reveal that while moderate vehicle presence
may enhance commercial access, excessive on-street parking -- especially in
narrow streets -- erodes walkability and reduces both satisfaction and
shop-level pricing. In contrast, streets with higher perceived greenery and
cleanliness show significantly greater satisfaction scores but only weak
associations with pricing. Street width moderates the effects of vehicle
presence, underscoring the importance of spatial configuration. These results
demonstrate the value of integrating AI-assisted perception with urban
morphological analysis to capture non-linear and context-sensitive drivers of
commercial success. This study advances both theoretical and methodological
frontiers by highlighting the conditional role of vehicle activity in
neighborhood commerce and demonstrating the feasibility of multimodal AI for
perceptual urban diagnostics. The implications extend to urban design, parking
management, and scalable planning tools for community revitalization.