YUNPENG WANG, QUYUAN LUO, CHANGLE LI, et al. Research and implementation of pedestrian detection technology based on smart road. [J]. Chinese journal on internet of things, 2019, 3(3): 84-89.
DOI:
YUNPENG WANG, QUYUAN LUO, CHANGLE LI, et al. Research and implementation of pedestrian detection technology based on smart road. [J]. Chinese journal on internet of things, 2019, 3(3): 84-89. DOI: 10.11959/j.issn.2096-3750.2019.00123.
Research and implementation of pedestrian detection technology based on smart road
Aiming at the problem of single detection function
higher cost and lower detection efficiency and reliability for current pedestrian detection
which was mostly realized by vehicle mounted equipment
a pedestrian detection technology based on smart road was proposed.By deploying a large number of low-cost
highly reliable Internet of things devices on the road
real-time detection of pedestrian information in the surrounding environment was realized.Early warning information can be provided to vehicles with very low latency wireless communication technology
which can improve road safety.At present
the prototype of the pedestrian detection system has been developed
and verified by field test
the pedestrian detection system can detect pedestrians effectively.Within the detection range of 4 meters
the accuracy of single device can reach 80%
and the accuracy of multiple cross-deployed devices can reach 100%.
关键词
智慧公路物联网行人检测原型机
Keywords
smart roadInternet of things (IoT)pedestrian detectionprototype
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