Learning to see through haze: Radar-based Human Detection for Adverse Weather Conditions

2019 European Conference on Mobile Robots (ECMR)(2019)

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摘要
In this paper, we present a lifelong-learning multisensor system for pedestrian detection in adverse weather conditions. The proposed method combines two people detection pipelines which process data provided by a lidar and an ultrawideband radar. The outputs of these pipelines are combined not only by means of adaptive sensor fusion, but they can also be used to help one another learn. In particular, the lidar-based detector provides labels to the incoming radar data, efficiently training the radar data classifier. In several experiments, we show that the proposed learning-fusion not only results in a gradual improvement of the system performance during routine operation, but also efficiently deals with lidar detection failures caused by thick fog conditions.
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关键词
radar-based human detection,adverse weather conditions,lifelong-learning multisensor system,pedestrian detection,people detection pipelines,ultrawideband radar,adaptive sensor fusion,radar data classifier,learning-fusion,lidar-based detector failures,thick fog conditions
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