Fusco Giovanni, Coughlan James M
Smith-Kettlewell Eye Research Institute, San Francisco CA 94115, USA.
Comput Help People Spec Needs. 2018 Jul;10897:86-93. doi: 10.1007/978-3-319-94274-2_13. Epub 2018 Jun 26.
Indoor wayfinding is a major challenge for people with visual impairments, who are often unable to see visual cues such as informational signs, land-marks and structural features that people with normal vision rely on for wayfinding. We describe a novel indoor localization approach to facilitate wayfinding that uses a smartphone to combine computer vision and a dead reckoning technique known as visual-inertial odometry (VIO). The approach uses sign recognition to estimate the user's location on the map whenever a known sign is recognized, and VIO to track the user's movements when no sign is visible. The ad-vantages of our approach are (a) that it runs on a standard smartphone and re-quires no new physical infrastructure, just a digital 2D map of the indoor environment that includes the locations of signs in it; and (b) it allows the user to walk freely without having to actively search for signs with the smartphone (which is challenging for people with severe visual impairments). We report a formative study with four blind users demonstrating the feasibility of the approach and suggesting areas for future improvement.
室内寻路对视力障碍者来说是一项重大挑战,他们往往无法看到视力正常的人在寻路时所依赖的视觉线索,如信息标志、地标和结构特征。我们描述了一种新颖的室内定位方法,以促进寻路,该方法使用智能手机将计算机视觉和一种称为视觉惯性里程计(VIO)的航位推算技术相结合。每当识别出已知标志时,该方法使用标志识别来估计用户在地图上的位置,当没有标志可见时,使用VIO来跟踪用户的移动。我们方法的优点是:(a)它在标准智能手机上运行,不需要新的物理基础设施,只需要室内环境的数字二维地图,其中包括标志的位置;(b)它允许用户自由行走,而不必用智能手机主动寻找标志(这对严重视力障碍者来说具有挑战性)。我们报告了一项对四名盲人用户的形成性研究,证明了该方法的可行性,并提出了未来改进的方向。