Combining Crowdsourcing and Google Street View to Identify Street-level Accessibility Problems

TitleCombining Crowdsourcing and Google Street View to Identify Street-level Accessibility Problems
Publication TypeConference Papers
Year of Publication2013
AuthorsHara K, Le V, Froehlich J
Conference NameCHI 2013 To Appear
Date Published2013
Abstract

Poorly maintained sidewalks, missing curb ramps, and other obstacles pose considerable accessibility challenges; however, there are currently few if any, mechanisms to determine accessible areas of a city a priori. In this paper, we investigate the
feasibility of using untrained crowd workers from Amazon Mechanical Turk (turkers) to find, label, and assess sidewalk accessibility problems in Google Street View imagery. We report on two studies: Study 1 examines the feasibility of this labeling task with six dedicated labelers including three wheelchair users; Study 2 investigates the comparative performance of turkers. In all, we collected 13,379 labels and 19,189 verification labels from a total of 402 turkers We show that turkers are capable of determining the presence of an accessibility problem with 81% accuracy. With simple quality control methods, this number increases to 93%. Our work demonstrates a promising new, highly scalable method for acquiring knowledge about sidewalk accessibility.