Quantifying Visual Navigation in Campus Open Spaces Using a Computer Vision Model

IF 4.3 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
Nabil Mohareb, Abdelaziz Ashraf
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Abstract

This study presents a framework specifically designed to measure and quantify visual experiences within academic campus environments. The framework addresses the need for quantitative methods to analyze spatial experiences, focusing on key elements of the built environment, such as visible sky, greenery, and spatial enclosure. While the framework emphasizes visual components, it does not aim to analyze broader sensory or emotional experiences. Instead, it establishes a foundation for future research to explore these dimensions comprehensively. The methodology utilizes mobile phones equipped with digital cameras and GPS sensors to capture first-person visual data while participants freely navigate through campus open spaces. Computer vision techniques, including instance segmentation and convolutional neural networks, are employed to categorize architectural and natural elements within each video frame. This process quantifies the proportional composition of visual elements such as greenery, open sky, walkways, buildings, and other structures that participants encounter. The framework is implemented as a Python model that is capable of generating quantitative outcomes. Additionally, the analysis is enhanced by integrating geographic information systems (GISs) for spatial analysis, allowing us to identify navigation and visual engagement patterns. This comprehensive methodology not only quantifies the visual attributes of spaces but also interprets their impact on the behavior and experiences of campus users. This framework offers insights into how navigation choices, visual experiences, and the types of scenes encountered on campus can be understood and analyzed. The results aim to guide urban designers in better understanding university students’ open space needs by exploring the connections between natural movement patterns and visual preferences. This research complements other qualitative approaches, providing a more comprehensive perspective on campus space utilization.

Abstract Image

基于计算机视觉模型的校园开放空间视觉导航量化研究
本研究提出了一个专门用于衡量和量化学术校园环境中视觉体验的框架。该框架解决了分析空间体验的定量方法的需求,重点关注建筑环境的关键要素,如可见的天空、绿化和空间封闭。虽然该框架强调视觉元素,但它并不旨在分析更广泛的感官或情感体验。相反,它为未来全面探索这些维度的研究奠定了基础。该方法利用配备数码相机和GPS传感器的手机来捕捉第一人称视觉数据,同时参与者可以自由地在校园开放空间中导航。计算机视觉技术,包括实例分割和卷积神经网络,被用来对每个视频帧中的建筑和自然元素进行分类。这个过程量化了参与者遇到的绿色植物、开阔的天空、人行道、建筑物和其他结构等视觉元素的比例组成。该框架被实现为能够生成定量结果的Python模型。此外,通过整合地理信息系统(GIS)进行空间分析,我们可以识别导航和视觉参与模式,从而增强分析能力。这种综合方法不仅量化了空间的视觉属性,还解释了它们对校园用户行为和体验的影响。该框架提供了如何理解和分析导航选择、视觉体验以及校园中遇到的场景类型的见解。研究结果旨在通过探索自然运动模式与视觉偏好之间的联系,指导城市设计师更好地了解大学生的开放空间需求。本研究补充了其他定性方法,为校园空间利用提供了更全面的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Human Behavior and Emerging Technologies
Human Behavior and Emerging Technologies Social Sciences-Social Sciences (all)
CiteScore
17.20
自引率
8.70%
发文量
73
期刊介绍: Human Behavior and Emerging Technologies is an interdisciplinary journal dedicated to publishing high-impact research that enhances understanding of the complex interactions between diverse human behavior and emerging digital technologies.
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