首页> 外国专利> Learning method and learning device to classify lane candidate pixels and detect lanes, and test method and test device using this {LEARNING METHOD, LEARNING DEVICE FOR DETECTING LANE THROUGH CLASSIFYING LANE CANDIDATE PIXELS AND

Learning method and learning device to classify lane candidate pixels and detect lanes, and test method and test device using this {LEARNING METHOD, LEARNING DEVICE FOR DETECTING LANE THROUGH CLASSIFYING LANE CANDIDATE PIXELS AND

机译:学习方法和学习设备来分类车道候选像素和检测通道,以及使用此方法的测试方法和测试设备,通过分类车道候选像素和检测车道的学习设备

摘要

A learning method for detecting at least one lane based on a convolutional neural network (CNN) is provided. The learning method includes steps of: (a) a learning device obtaining encoded feature maps, and information on lane candidate pixels in a input image; (b) the learning device, classifying a first parts of the lane candidate pixels ,whose probability scores are not smaller than a predetermined threshold, as strong line pixels, and classifying the second parts of the lane candidate pixels, whose probability scores are less than the threshold but not less than another predetermined threshold, as weak lines pixels; and (c) the learning device, if distances between the weak line pixels and the strong line pixels are less than a predetermined distance, classifying the weak line pixels as pixels of additional strong lines, and determining that the pixels of the strong line and the additional correspond to pixels of the lane.
机译:提供了一种用于检测基于卷积神经网络(CNN)的至少一个车道的学习方法。学习方法包括以下步骤:(a)获取编码特征映射的学习设备,以及关于输入图像中的车道候选像素的信息; (b)学习设备,分类车道候选像素的第一部分,其概率得分不小于预定阈值,作为强线像素,以及分类车道候选像素的第二部分,其概率得分小于阈值但不小于另一个预定阈值,作为弱线像素; (c)(c)学习装置,如果弱线像素和强线像素之间的距离小于预定距离,则将弱线像素分类为额外的强行的像素,并确定强线的像素和附加对应于车道的像素。

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