通过智能移动众包表征道路状况

Dustin Shorter, Sami Alshammari, Sejun Song
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引用次数: 4

摘要

恶劣的路况会造成车辆损坏,并造成危险的驾驶条件。目前恶劣路况的报道方法对记者来说是一种负担,以至于这些路况可能不会被报道。利用目前的智能手机技术,这种报告方法可以大大改进。智能手机配备了加速度计和GPS定位。利用这些传感器,一旦安装并运行应用程序,智能手机用户就可以在驾驶时自动收集恶劣路况。然后用户可以将数据上传到服务器。然后,这些路况被分类,并在用户驾驶时选择性地显示在地图上。通过众包,发现路况不好的可能性大大增加。在分析路况数据时,使用一种算法来确定恶劣路况的大小以及需要多少样本。尽管智能手机可能没有专用加速计的采样率,但它利用众包和易用性收集大量数据的潜力超过了这一缺陷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterizing Road Conditions Via Smart Mobile Crowd Sourcing
Bad road conditions can cause vehicle damage and create hazardous driving conditions. Current reporting methods for bad road conditions is a burden for the reporter, so much so that these conditions might not be reported. With current smartphone technology this reporting method can be greatly improved. Smartphones come with an accelerometer and GPS positioning on-board. Utilizing these sensors, once the application is installed and run, a smartphone user can gather bad road conditions automatically while driving. Then the user can upload the data to the server. These road conditions are then classified and optionally displayed on a map while the user is driving. The potential for finding bad road conditions is greatly increases with crowd sourcing. When the road condition data is analyzed an algorithm is used to determine the size of the bad road condition and how many samples are needed. Even though the smartphone might not have the sampling rate of a dedicated accelerometer, its potential for gather large amounts of data using crowd sourcing and ease of use outweighs this deficiency.
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