首页> 外国专利> Learning method and learning device for improving segmentation performance to be used for detecting road user events using double embedding configuration in multi-camera system and testing method and testing device using the same

Learning method and learning device for improving segmentation performance to be used for detecting road user events using double embedding configuration in multi-camera system and testing method and testing device using the same

机译:用于在多摄像机系统中使用双重嵌入配置来检测道路用户事件的,用于提高分割性能的学习方法和学习设备以及使用该学习方法的学习方法和测试设备

摘要

A learning method for improving segmentation performance to be used for detecting road user events including pedestrian events and vehicle events using double embedding configuration in a multi-camera system is provided. The learning method includes steps of: a learning device instructing similarity convolutional layer to generate similarity embedding feature by applying similarity convolution operations to a feature outputted from a neural network; instructing similarity loss layer to output a similarity loss by referring to a similarity between two points sampled from the similarity embedding feature, and its corresponding GT label image; instructing distance convolutional layer to generate distance embedding feature by applying distance convolution operations to the similarity embedding feature; instructing distance loss layer to output a distance loss for increasing inter-class differences among mean values of instance classes and decreasing intra-class variance values of the instance classes; backpropagating at least one of the similarity loss and the distance loss.
机译:提供一种用于提高分割性能的学习方法,该方法用于在多摄像机系统中使用双嵌入配置来检测包括行人事件和车辆事件的道路用户事件。该学习方法包括以下步骤:学习设备通过将相似性卷积操作应用于从神经网络输出的特征来指示相似性卷积层以生成相似性嵌入特征;以及参照相似度嵌入特征采样的两点之间的相似度及其对应的GT标签图像,指示相似度损失层输出相似度损失;通过对相似度嵌入特征进行距离卷积运算,指示距离卷积层产生距离嵌入特征;指示距离损失层输出距离损失,以增加实例类别的平均值之间的类别间差异,并减小实例类别的类别内方差值;反向传播相似度损失和距离损失中的至少一个。

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