CVMay 13, 2021

Assessing bikeability with street view imagery and computer vision

arXiv:2105.08499v3182 citations
Originality Incremental advance
AI Analysis

This work addresses the need for scalable and automated bikeability assessment in transportation and urban analytics, though it is incremental in extending existing SVI approaches.

The study tackled the problem of assessing urban bikeability by developing a comprehensive index of 34 indicators using street view imagery and computer vision, and found that these methods outperformed traditional non-SVI techniques by a wide margin, suggesting they can be used independently to evaluate bikeability in cities.

Studies evaluating bikeability usually compute spatial indicators shaping cycling conditions and conflate them in a quantitative index. Much research involves site visits or conventional geospatial approaches, and few studies have leveraged street view imagery (SVI) for conducting virtual audits. These have assessed a limited range of aspects, and not all have been automated using computer vision (CV). Furthermore, studies have not yet zeroed in on gauging the usability of these technologies thoroughly. We investigate, with experiments at a fine spatial scale and across multiple geographies (Singapore and Tokyo), whether we can use SVI and CV to assess bikeability comprehensively. Extending related work, we develop an exhaustive index of bikeability composed of 34 indicators. The results suggest that SVI and CV are adequate to evaluate bikeability in cities comprehensively. As they outperformed non-SVI counterparts by a wide margin, SVI indicators are also found to be superior in assessing urban bikeability, and potentially can be used independently, replacing traditional techniques. However, the paper exposes some limitations, suggesting that the best way forward is combining both SVI and non-SVI approaches. The new bikeability index presents a contribution in transportation and urban analytics, and it is scalable to assess cycling appeal widely.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes