Structure Lane Detection Based on Saliency Feature of Color and Direction

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In this paper, we propose a method for structure lane detection; the method is based on two features: color and direction. This method can improve the robustness and accuracy of lane detection. Two kinds of saliency map have been calculated: color saliency map and direction saliency map. The final saliency map is the combination of the two map mentioned above. The binary image is getting from the final saliency map, and the feature points which used for fitting have been selected. The road region is segmented by the lanes. Experiment result shows that the proposed method produces better performance against some other methods.

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2876-2879

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February 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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