CVSep 1, 2023

Time Series Analysis of Urban Liveability

arXiv:2309.00594v1
Originality Synthesis-oriented
AI Analysis

This is an incremental study for urban planners and researchers, showing challenges in liveability monitoring across time periods.

The paper tackled monitoring urban liveability changes over time in Dutch cities using deep learning on aerial images, but the results were difficult to interpret due to image acquisition differences, highlighting the complexity of the task.

In this paper we explore deep learning models to monitor longitudinal liveability changes in Dutch cities at the neighbourhood level. Our liveability reference data is defined by a country-wise yearly survey based on a set of indicators combined into a liveability score, the Leefbaarometer. We pair this reference data with yearly-available high-resolution aerial images, which creates yearly timesteps at which liveability can be monitored. We deploy a convolutional neural network trained on an aerial image from 2016 and the Leefbaarometer score to predict liveability at new timesteps 2012 and 2020. The results in a city used for training (Amsterdam) and one never seen during training (Eindhoven) show some trends which are difficult to interpret, especially in light of the differences in image acquisitions at the different time steps. This demonstrates the complexity of liveability monitoring across time periods and the necessity for more sophisticated methods compensating for changes unrelated to liveability dynamics.

Foundations

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

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