2019
DOI: 10.1007/978-3-030-34110-7_58
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Large-Scale Street Space Quality Evaluation Based on Deep Learning Over Street View Image

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Cited by 11 publications
(13 citation statements)
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References 16 publications
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“…Liu et al [18] proposed a computer vision method including three machine learning models, to use street view images to evaluate the urban environmental quality from the architectural level on a large scale. Liu et al [19] proposed a deep learning approach to estimate the street quality score. Zhang et al [26] investigated a data-driven machine learning approach to measure how people perceive the urban region.…”
Section: Application Of Street View Imagery To Evaluate Urban Spacementioning
confidence: 99%
See 2 more Smart Citations
“…Liu et al [18] proposed a computer vision method including three machine learning models, to use street view images to evaluate the urban environmental quality from the architectural level on a large scale. Liu et al [19] proposed a deep learning approach to estimate the street quality score. Zhang et al [26] investigated a data-driven machine learning approach to measure how people perceive the urban region.…”
Section: Application Of Street View Imagery To Evaluate Urban Spacementioning
confidence: 99%
“…Liu et al [18] evaluated the qualities of urban appearance using machine learning, but it was limited to architectural level analysis. Liu et al [19] used deep learning to estimate street space quality based on three quantitative indices (i.e., cleanliness, comfort and traffic) they defined and labelled themselves; there may be a gap between their opinions and the public's preference. Zhang et al [26] employed street view image as a proxy for the urban environment to evaluate human perceptions of a city by using a deep convolutional neural network (DCNN), but they only used the positive confidence of a binary classification model as the perception scores, without proving the consistency between their results with the ground truth.…”
Section: Application Of Street View Imagery To Evaluate Urban Spacementioning
confidence: 99%
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“…Therefore, as a source factor that affects the vitality of street space and economic benefits, visual attraction begins to enter the field of academic research.Visual attraction has changed from a little-noticed behavior in the past to a new direction in academic research.From the current studies, researchers mainly try to construct the basic methods of spatial visual quality evaluation of commercial streets from different perspectives.For example, the visual attraction behavior of commercial streets is evaluated from three aspects of subjective, objective and visual influencing factors [9] .Provide design guidance through perceptual visual quality and detailed mapping of key elements in the street [10] ;Based on the characteristics of visual attraction behavior, the lighting design elements and requirements of commercial streets are discussed [11] .By collecting the data of the impact of street scenery on street space, the visual perception quality was evaluated [12] .A user-centered visual evaluation of the facades in the streets of historic blocks [13] ;Based on Street View image analysis, the visual quality of street space is scored [14] , etc.…”
Section: Evolution Of Evaluation Methods Of Commercial Street Space Designmentioning
confidence: 99%
“…From the perspective of urban planning and spatial design, inclusiveness, accessibility, user-friendly, and just right-of-way (ROW) are the principal qualities of future roads. Studies by Middel et al (2019), Cadamuro et al (2019) and Liu et al (2019) applied Deep Learning (DL) techniques to measure walkability, connectivity, greenery and other qualities of the street space. Equipped with advanced critical techniques from ITS, such as Roadside Units (RSUs) and fast-charging facilities, the future road space is likely to realise a wide range of automated scenes that used to be described in science fiction.…”
Section: Future Road Space and Complete Street Schemementioning
confidence: 99%