DocumentCode :
28353
Title :
POVA: Traffic Light Sensing with Probe Vehicles
Author :
Yanmin Zhu ; Xuemei Liu ; Minglu Li ; Qian Zhang
Author_Institution :
Dept. of Comput. Sci. & Eng., Shanghai Jiao Tong Univ., Shanghai, China
Volume :
24
Issue :
7
fYear :
2013
fDate :
Jul-13
Firstpage :
1390
Lastpage :
1400
Abstract :
Traffic light sensing aims to detect the status of traffic lights which is valuable for many applications such as traffic management, traffic light optimization, and real-time vehicle navigation. In this work, we develop a system called POVA for traffic light sensing in large-scale urban areas. The system employs pervasive probe vehicles that just report real-time states of position and speed from time to time. POVA has advantages of wide coverage and low deployment cost. The important observation motivating the design of POVA is that a traffic light has a considerable impact on mobility of vehicles on the road attached to the traffic light. However, the system design faces three unique challenges: 1) Probe reports are by nature discrete while the goal of traffic light sensing is to determine the state of a traffic light at any time; 2) there may be a very limited number of probe reports in a given duration for traffic light state estimation; and 3) a traffic light may change its state with a variable interval. To tackle the challenges, we develop a new technique that makes the best use of limited probe reports as well as statistical features of light states. It first estimates the state of a traffic light at the time instant of a report by applying maximum a posterior estimation. Then, we formulate the state estimation of a light at any time into a joint optimization problem that is solved by an efficient heuristic algorithm. We have implemented the system and tested it with a fleet of around 4,000 probe taxis and 2,000 buses in Shanghai, China. Trace-driven experimentation and field study show that nearly 60 percent of traffic lights have an estimation error lower than 19 percent if 20,000 probe vehicles would be employed in the urban area of Shanghai. We further demonstrate that the estimation error rate is as low as 18 percent even when the number of available reports is merely 1 per minute.
Keywords :
maximum likelihood estimation; navigation; probes; road traffic; China; POVA; Shanghai; estimation error rate; joint optimization problem; low deployment cost; maximum a posterior estimation; probe vehicles; real-time vehicle navigation; traffic light optimization; traffic light sensing; traffic light state estimation; traffic management; urban area; Entropy; Probes; Roads; Sensors; State estimation; Vehicles; GPS traces; MAP; Traffic light sensing; probe vehicles; statistical features; taxi;
fLanguage :
English
Journal_Title :
Parallel and Distributed Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9219
Type :
jour
DOI :
10.1109/TPDS.2012.233
Filename :
6255741
Link To Document :
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