Institute of Urban and Rural Planning Theories and Technologies, College of Civil Engineering and Architecture, Zhejiang University, Hangzhou 310058, China.
Institute of Landscape Architecture, College of Agriculture and Biotechnology, Zhejiang University, Hangzhou 310058, China.
Int J Environ Res Public Health. 2022 Oct 15;19(20):13308. doi: 10.3390/ijerph192013308.
Emotional responses are significant for understanding public perceptions of urban green space (UGS) and can be used to inform proposals for optimal urban design strategies to enhance public emotional health in the times of COVID-19. However, most empirical studies fail to consider emotion-oriented landscape assessments under dynamic perspectives despite the fact that individually observed sceneries alter with angle. To close this gap, a real-time sentimental-based landscape assessment framework is developed, integrating facial expression recognition with semantic segmentation of changing landscapes. Furthermore, a case study using panoramic videos converted from Google Street View images to simulate changing scenes was used to test the viability of this framework, resulting in five million big data points. The result of this study shows that through the collaboration of deep learning algorithms, finer visual variables were classified, subtle emotional responses were tracked, and better regression results for valence and arousal were obtained. Among all the predictors, the proportion of grass was the most significant predictor for emotional perception. The proposed framework is adaptable and human-centric, and it enables the instantaneous emotional perception of the built environment by the general public as a feedback survey tool to aid urban planners in creating UGS that promote emotional well-being.
情感反应对于理解公众对城市绿地(UGS)的看法至关重要,并且可以用来为最佳城市设计策略提供信息,以在 COVID-19 时代增强公众的情绪健康。然而,尽管个体观察到的景观随着角度的变化而变化,但大多数实证研究未能考虑面向情感的景观评估的动态视角。为了弥补这一差距,开发了一个基于实时情感的景观评估框架,将面部表情识别与变化景观的语义分割相结合。此外,使用从 Google Street View 图像转换而来的全景视频进行了案例研究,以模拟变化的场景,从而测试了该框架的可行性,产生了五百万个大数据点。这项研究的结果表明,通过深度学习算法的协作,可以对更精细的视觉变量进行分类,跟踪微妙的情感反应,并获得更好的效价和唤醒度回归结果。在所有预测因子中,草的比例是情感感知的最显著预测因子。所提出的框架具有适应性和以人为本的特点,它使公众能够即时感知建筑环境,作为反馈调查工具,帮助城市规划者创建促进情绪健康的 UGS。