Wang Lei, He Wenqi, Wu Shan, Zhang Bo, Zhang Xiaorui, Yin Hu
School of Architecture and Art, North China University of Technology, Beijing, 100144, China.
Institute of Territorial Spatial Planning, Bejing Hyrea Solidale Technology Co., Ltd., Beijing, 100160, China.
Sci Rep. 2025 Aug 22;15(1):30942. doi: 10.1038/s41598-025-16173-4.
As the global population ages, enhancing community outdoor public spaces to accommodate the needs of senior citizens has emerged as a critical challenge. This research delves into the intricate relationship between community outdoor public spaces and the behavioral patterns of the elderly, seeking to inform strategies for optimizing these spaces. The complexity and diversity of the mechanisms linking elderly behaviors with the characteristics of their outdoor environments pose challenges in identifying clear guidelines for improvement. Traditional methods of collecting behavioral data, such as questionnaires and manual observations, are time-consuming and limit the scope and detail of data captured. In contrast, computer vision technologies offer an efficient alternative for gathering behavioral data. However, the application of computer vision to specifically identify various behaviors of the elderly population presents certain challenges. This study addresses two key issues: improving the use of computer vision to recognize diverse behaviors of the elderly; and elucidating how community outdoor public spaces shape the outdoor activities of seniors and identifying crucial influencing factors. The research proceeds by initially categorizing elderly behavior characteristics and typologies of outdoor public spaces based on the physiological and psychological needs of seniors. The spatial elements are classified into four metrics: spatial, greenness, functional facilities, and accessibility. A computer vision-based behavior detection algorithm is then constructed to effectively identify six typical activities of the elderly: exercising, jogging, sitting, standing, walking, and playing chess or cards. Subsequently, a set of quantifiable indicators for community outdoor public spaces is established, and nonlinear machine learning models (Random Forest, Gradient Boosting Decision Tree, and eXtreme Gradient Boosting) are employed to reveal the association mechanisms between these six behaviors and the four categories of spatial metrics. The findings highlight 16 major characteristics that have a significant impact on elderly behavior, such as area size, form, green enclosure, and types of workout equipment.
随着全球人口老龄化,改善社区户外公共空间以满足老年人的需求已成为一项严峻挑战。本研究深入探讨社区户外公共空间与老年人行为模式之间的复杂关系,旨在为优化这些空间提供策略依据。将老年人行为与户外环境特征相联系的机制复杂多样,这给确定明确的改进指导方针带来了挑战。传统的行为数据收集方法,如问卷调查和人工观察,既耗时又限制了所采集数据的范围和细节。相比之下,计算机视觉技术为收集行为数据提供了一种高效的替代方法。然而,应用计算机视觉专门识别老年人群体的各种行为存在一定挑战。本研究解决两个关键问题:提高计算机视觉用于识别老年人多样行为的能力;阐明社区户外公共空间如何塑造老年人的户外活动并识别关键影响因素。研究首先根据老年人的生理和心理需求对老年人行为特征及户外公共空间类型进行分类。空间要素分为四个指标:空间、绿化、功能设施和可达性。然后构建基于计算机视觉的行为检测算法,以有效识别老年人的六种典型活动:锻炼、慢跑、坐着、站立、行走以及下棋或打牌。随后,建立了一套社区户外公共空间的可量化指标,并采用非线性机器学习模型(随机森林、梯度提升决策树和极端梯度提升)来揭示这六种行为与四类空间指标之间的关联机制。研究结果突出了对老年人行为有重大影响的16个主要特征,如面积大小、形态、绿色围合以及健身器材类型等。