Big data public art design based on multi core processor and computer vision

2021 ◽  
Vol 81 ◽  
pp. 103777
Author(s):  
Jia Li
2020 ◽  
pp. 003335492096879
Author(s):  
Quynh C. Nguyen ◽  
Jessica M. Keralis ◽  
Pallavi Dwivedi ◽  
Amanda E. Ng ◽  
Mehran Javanmardi ◽  
...  

Objectives Built environments can affect health, but data in many geographic areas are limited. We used a big data source to create national indicators of neighborhood quality and assess their associations with health. Methods We leveraged computer vision and Google Street View images accessed from December 15, 2017, through July 17, 2018, to detect features of the built environment (presence of a crosswalk, non–single-family home, single-lane roads, and visible utility wires) for 2916 US counties. We used multivariate linear regression models to determine associations between features of the built environment and county-level health outcomes (prevalence of adult obesity, prevalence of diabetes, physical inactivity, frequent physical and mental distress, poor or fair self-rated health, and premature death [in years of potential life lost]). Results Compared with counties with the least number of crosswalks, counties with the most crosswalks were associated with decreases of 1.3%, 2.7%, and 1.3% of adult obesity, physical inactivity, and fair or poor self-rated health, respectively, and 477 fewer years of potential life lost before age 75 (per 100 000 population). The presence of non–single-family homes was associated with lower levels of all health outcomes except for premature death. The presence of single-lane roads was associated with an increase in physical inactivity, frequent physical distress, and fair or poor self-rated health. Visible utility wires were associated with increases in adult obesity, diabetes, physical and mental distress, and fair or poor self-rated health. Conclusions The use of computer vision and big data image sources makes possible national studies of the built environment’s effects on health, producing data and results that may inform national and local decision-making.


2011 ◽  
Vol 36 (4) ◽  
pp. 34-40
Author(s):  
Elizabeth Lawes ◽  
Tania Olsson

This article examines some of the problems associated with the initial classification and subsequent reclassification of a specialist Fine Art library. The Library at the then Chelsea School of Art was established in the early 1960s. It was unusual, ‘being predominantly a fine art (painting and sculpture) institution, with lesser responsibilities in design.’ Most ‘off the peg’ classification schemes do not incorporate enough flexibility for the detail required by such a specific collection, but do include large sections devoted to design subjects which were unnecessary at the time. It was decided, therefore, to create a bespoke scheme for the Chelsea collection, and this was adapted several times over the years to fit in with the changing landscape of art history and art education. In January 2005, Chelsea College of Art & Design relocated to a new unified site on Millbank, merging the three very specialised libraries: Manresa Road (Fine Art), Hugon Road (Interior and Spatial Design, Graphics and Illustration) and Lime Grove (Textiles and Public Art). One of the major challenges of this relocation was to bring all the collections together under one classification scheme.


Sign in / Sign up

Export Citation Format

Share Document