Linear-chain CRF based intersection recognition

Vehicular Electronics and Safety(2014)

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摘要
For autonomous navigation in urban environments, the ability to detect road intersections in advance is crucial, especially in the absence of auxiliary geographic information. In this paper we investigate a 3D Point Cloud based solution for intersection recognition and road segment classification. We set up the intersection recognition problem as one of decoding a linear-chain Conditional Random Field (CRF). This allows us to encode temporal consistency relations between adjacent scans in our process, leading to a less error prone recognition algorithm. We quantify this claim experimentally. We first build a grid map of the point cloud, segmenting the region surrounding the robot into navigable and non-navigable regions. Then, based on our proposed beam model, we extract a descriptor of the scene. This we do as each scan is received from the robot. Based on the descriptor we build a linear chain-CRF. By decoding the CRF-chain we are able to recognize the type of road segment taken into consideration. With the proposed method, we are able to recognize Xjunctions, T-shaped intersections and standard non-branching road segments. We compare the CRF-based approach with a standard SVM based one and show performance gain due to the CRF formulation.
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关键词
computational geometry,image classification,image segmentation,mobile robots,object detection,object recognition,random processes,road vehicles,robot vision,3d point cloud based solution,t-shaped intersections,x-junctions,autonomous navigation,beam model,linear-chain crf based road intersection recognition,linear-chain conditional random field,mobile robot,region segmentation,road intersection detection,road segment classification,standard nonbranching road segments,urban environments,decoding,global positioning system,robots
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