School of Geography and Planning, Sun Yat-Sen University, Xingang Xi Road, Guangzhou, 510275, China.
Guangdong Key Laboratory for Urbanization and Geo-Simulation, Sun Yat-Sen University, Xingang Xi Road, Guangzhou, 510275, China.
Int J Health Geogr. 2019 Jul 25;18(1):18. doi: 10.1186/s12942-019-0182-z.
Neighbourhood environment characteristics have been found to be associated with residents' willingness to conduct physical activity (PA). Traditional methods to assess perceived neighbourhood environment characteristics are often subjective, costly, and time-consuming, and can be applied only on a small scale. Recent developments in deep learning algorithms and the recent availability of street view images enable researchers to assess multiple aspects of neighbourhood environment perceptions more efficiently on a large scale. This study aims to examine the relationship between each of six neighbourhood environment perceptual indicators-namely, wealthy, safe, lively, depressing, boring and beautiful-and residents' time spent on PA in Guangzhou, China.
A human-machine adversarial scoring system was developed to predict perceptions of neighbourhood environments based on Tencent Street View imagery and deep learning techniques. Image segmentation was conducted using a fully convolutional neural network (FCN-8s) and annotated ADE20k data. A human-machine adversarial scoring system was constructed based on a random forest model and image ratings by 30 volunteers. Multilevel linear regressions were used to examine the association between each of the six indicators and time spent on PA among 808 residents living in 35 neighbourhoods.
Total PA time was positively associated with the scores for "safe" [Coef. = 1.495, SE = 0.558], "lively" [1.635, 0.789] and "beautiful" [1.009, 0.404]. It was negatively associated with the scores for "depressing" [- 1.232, 0.588] and "boring" [- 1.227, 0.603]. No significant linkage was found between total PA time and the "wealthy" score. PA was further categorised into three intensity levels. More neighbourhood perceptual indicators were associated with higher intensity PA. The scores for "safe" and "depressing" were significantly related to all three intensity levels of PA.
People living in perceived safe, lively and beautiful neighbourhoods were more likely to engage in PA, and people living in perceived boring and depressing neighbourhoods were less likely to engage in PA. Additionally, the relationship between neighbourhood perception and PA varies across different PA intensity levels. A combination of Tencent Street View imagery and deep learning techniques provides an accurate tool to automatically assess neighbourhood environment exposure for Chinese large cities.
已有研究发现,邻里环境特征与居民进行身体活动(PA)的意愿有关。评估感知邻里环境特征的传统方法往往具有主观性、成本高且耗时,并且只能小规模应用。深度学习算法的最新发展以及街景图像的最新可用性使研究人员能够更有效地大规模评估邻里环境感知的多个方面。本研究旨在探讨中国广州的六种邻里环境感知指标(即富裕、安全、热闹、压抑、无聊和美丽)与居民 PA 时间之间的关系。
开发了一种人机对抗评分系统,该系统基于腾讯街景图像和深度学习技术来预测邻里环境感知。使用全卷积神经网络(FCN-8s)和标注的 ADE20k 数据进行图像分割。基于随机森林模型和 30 名志愿者的图像评分构建了人机对抗评分系统。使用多层次线性回归分析来检验 35 个邻里的 808 名居民中,每种指标与 PA 时间之间的关联。
PA 总时间与“安全”[系数=1.495,SE=0.558]、“热闹”[1.635,0.789]和“美丽”[1.009,0.404]的得分呈正相关。它与“压抑”[-1.232,0.588]和“无聊”[-1.227,0.603]的得分呈负相关。PA 总时间与“富裕”得分之间没有显著关联。PA 进一步分为三个强度级别。更多的邻里感知指标与高强度 PA 相关。“安全”和“压抑”的得分与所有三种强度水平的 PA 均显著相关。
生活在感知安全、热闹和美丽的邻里环境中的人更有可能进行 PA,而生活在感知无聊和压抑的邻里环境中的人则不太可能进行 PA。此外,邻里感知与 PA 之间的关系因 PA 强度水平而异。腾讯街景图像和深度学习技术的结合为中国大城市自动评估邻里环境暴露提供了一个准确的工具。