偏爱
眼动
行人
样品(材料)
城市设计
计算机科学
秩(图论)
过程(计算)
运输工程
地理
城市规划
心理学
人工智能
工程类
土木工程
统计
数学
化学
组合数学
操作系统
色谱法
作者
Robert B. Noland,Marc D. Weiner,Dongli Gao,Michael Cook,Anton C. Nelessen
标识
DOI:10.1080/17549175.2016.1187197
摘要
Urban planners and designers use visual preference surveys to gather public opinion on potential designs for developments. Using eye-tracking technology, we administered a visual preference survey to a convenience sample to evaluate quantitatively the ways in which individuals process and rank images used in public settings for urban planning. We combined both a subjective qualitative analysis with quantitative evaluation of the eye-tracking data. The analysis largely confirms that various new urbanist components of the images, namely people, pedestrian features, and greenery, lead to higher rankings. Images with cars and parking receive negative rankings. Buildings, which are a key component of architectural design, had mixed results. The analysis demonstrates the efficacy of visual preference surveys. We show a way for transportation and urban planners to extract greater value from visual preference surveys, consistent with efforts to increase pedestrian activity while reducing motor vehicle traffic in cities.
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