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图学学报 ›› 2026, Vol. 47 ›› Issue (3): 641-652.DOI: 10.11996/JG.j.2095-302X.2026030641

• 建筑与城市信息模型 • 上一篇    下一篇

基于TrueSkill排序与深度学习的绿色工地主观视觉感知预测

卢德辉1, 宋琢1, 黄志超1, 田时雨1, 李慧敏2, 田茂3, 邓逸川2,4()   

  1. 1 广州一建建设集团有限公司广东 广州 510060
    2 华南理工大学土木与交通学院广东 广州 510641
    3 不列颠哥伦比亚大学土木工程系不列颠哥伦比亚 温哥华 V6T 1Z4
    4 亚热带建筑科学国家重点实验室广东 广州 510641
  • 收稿日期:2025-11-12 接受日期:2026-02-09 出版日期:2026-06-30 发布日期:2026-06-30
  • 通讯作者:邓逸川,E-mail:ctycdeng@scut.edu.cn
  • 基金资助:
    国家自然科学基金(52308314);广东省自然科学基金-青年提升项目(2023A1515030169);广东省住房和城乡建设厅科技创新计划(20250305J0004);广州市建筑集团有限公司科技计划项目([2023]-KJ008);广州市科技计划项目(2025A04J5216)

Subjective visual perception prediction of green construction sites based on TrueSkill ranking and deep learning

LU Dehui1, SONG Zhuo1, HUANG Zhichao1, TIAN Shiyu1, LI Huimin2, TIAN Mao3, DENG Yichuan2,4()   

  1. 1 Guangzhou First Construction Group Co. Ltd., Guangzhou Guangdong 510060, China
    2 School of Civil Engineering and Transportation, South China University of Technology, Guangzhou Guangdong 510641, China
    3 Department of Civil Engineering, University of British Columbia, Vancouver, British Columbia V6T 1Z4, Canada
    4 State Key Laboratory of Subtropical Architecture Science, Guangzhou Guangdong 510641, China
  • Received:2025-11-12 Accepted:2026-02-09 Published:2026-06-30 Online:2026-06-30
  • Contact: DENG Yichuan,E-mail:ctycdeng@scut.edu.cn
  • Supported by:
    National Natural Science Foundation of China(52308314);Youth Enhance Project of Natural Science Foundation of Guangdong Province(2023A1515030169);Technology Innovation Program of Guangdong Provincial Department of Housing and Urban-Rural Development(20250305J0004);Technology Program Project of Guangzhou Municipal Construction Group CO. LTD.([2023]-KJ008);Guangzhou Science and Technology Program Project(2025A04J5216)

摘要:

可持续发展是应对全球环境与能源挑战的核心路径,建筑施工行业已逐步推行绿色施工实践,但施工环境特征与人类主观感知之间的内在关联尚未得到系统探究,导致绿色施工在安全性、美观性与效率优化方面缺乏针对性理论支撑。为明确人类对施工环境的感知规律以指导绿色施工实践优化,通过在线众包平台采集受试者关于施工场景图像的随机匹配组合的偏好数据,采用微软TrueSkill系统对感知偏好结果进行量化排序。针对施工场景中的关键视觉元素,运用感兴趣区域(ROI)分析法开展特征提取与解析,同时选取并训练卷积神经网络(CNN)模型以实现感知质量的自动化预测。结果显示,施工现场在上述感知维度的主观感知与特定视觉特征存在显著统计学关联:现场建材堆放整齐度、地面整洁度与设备使用情况分别影响安全性、美观性与效率性感知。由于前2类视觉特征同属施工场地有序度的外在体现,故而安全性和美观性感知存在强正相关性,而效率性感知和另2类感知间均未显示相关性。研究创新性地提出众包技术与深度学习相结合的施工环境评估框架,验证了不同群体对施工场景视觉感知的一致性特征,明确了文明施工现场需满足的特定视觉标准,为施工环境感知质量的自动化评价体系构建提供了基准依据。

关键词: 绿色施工, 感知评价, 深度学习

Abstract:

Sustainable development serves as a core approach to addressing global environmental and energy challenges, while the construction industry has gradually implemented green construction practices, but the inherent connection between construction environment characteristics and human subjective perception has not yet been systematically explored. This gap results in a lack of targeted theoretical support for the optimization of green construction in terms of safety, aesthetics, and efficiency. To clarify the laws governing human perception of construction environments and thereby guide the optimization of green construction practices, this research collected preference data from participants regarding randomly matched combinations of two typical construction scenario images through an online crowdsourcing platform. The Microsoft TrueSkill system was employed to quantitatively rank the perceptual preference results. For the key visual elements in the construction scenarios, the Region of Interest (ROI)-based analysis method was used for feature extraction and interpretation. Meanwhile, several Convolutional Neural Networks (CNN) were selected and trained to enable the automated prediction of perceptual quality. The results indicate that there is a significant statistical correlation between the subjective perception of construction sites in the perceptual dimensions mentioned above and specific visual features: the stacking neatness of on-site building materials, ground cleanliness and equipment usage affect the perception about safety, aesthetics and efficiency, respectively. Due to the fact that the first two types of visual features are both external manifestations of the construction site orderiness, the perception of safety and aesthetics exhibits a strong positive correlation, while no correlation was observed between efficiency perception and the other two types of perception. An innovative construction environment evaluation framework was proposed, integrating crowdsourcing technology with deep learning. The consistency of visual perception of construction scenarios across different groups was clarified, and the specific visual standards required for civilized construction sites were clarified, providing a benchmark foundation for the establishment of an automated evaluation system for the perceptual quality of construction environments.

Key words: green construction, perceptual evaluation, deep learning

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