Quantifying urban streetscapes with deep learning: focus on aesthetic evaluation

06/29/2021
by   Yusuke Kumakoshi, et al.
0

The disorder of urban streetscapes would negatively affect people's perception of their aesthetic quality. The presence of billboards on building facades has been regarded as an important factor of the disorder, but its quantification methodology has not yet been developed in a scalable manner. To fill the gap, this paper reports the performance of our deep learning model on a unique data set prepared in Tokyo to recognize the areas covered by facades and billboards in streetscapes, respectively. The model achieved 63.17 accuracy, measured by Intersection-over-Union (IoU), thus enabling researchers and practitioners to obtain insights on urban streetscape design by combining data of people's preferences.

READ FULL TEXT
research
08/01/2020

Standardized Green View Index and Quantification of Different Metrics of Urban Green Vegetation

Urban greenery is considered an important factor in relation to sustaina...
research
11/29/2017

Rule based End-to-End Learning Framework for Urban Growth Prediction

Due to the rapid growth of urban areas in the past decades, it has becom...
research
11/19/2018

How far from automatically interpreting deep learning

In recent years, deep learning researchers have focused on how to find t...
research
12/23/2019

Extracting urban water by combining deep learning and Google Earth Engine

Urban water is important for the urban ecosystem. Accurate and efficient...
research
10/13/2020

Automatic Extraction of Urban Outdoor Perception from Geolocated Free-Texts

The automatic extraction of urban perception shared by people on locatio...
research
01/22/2016

Why Do Urban Legends Go Viral?

Urban legends are a genre of modern folklore, consisting of stories abou...
research
01/16/2020

FaceLift: A transparent deep learning framework to beautify urban scenes

In the area of computer vision, deep learning techniques have recently b...

Please sign up or login with your details

Forgot password? Click here to reset