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Towards Feature Validation in Time to Lane Change Classification using Deep Neural Networks

机译:使用深神经网络及时及时验证车道改变分类

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In this paper, we explore different Convolutional Neural Network (CNN) architectures to extract features in a Time to Lane Change (TTLC) classification problem for highway driving functions. These networks are trained using the HighD dataset, a public dataset of realistic driving on German highways. The investigated CNNs achieve approximately the same test accuracy which, at first glance, seems to suggest that all of the algorithms extract features of equal quality. We argue however that the test accuracy alone is not sufficient to validate the features which the algorithms extract. As a form of validation, we propose a two pronged approach to confirm the quality of the extracted features. In the first stage, we apply a clustering algorithm on the features and investigate how logical the feature clusters are with respect to both an external clustering validation measure and with respect to expert knowledge. In the second stage, we use a state-of-the-art dimensionality reduction technique to visually support the findings of the first stage of validation. In the end, our analysis suggests that the different CNNs, which have approximately equal accuracies, extract features of different quality. This may lead a user to choose one of the CNN architectures over the others.
机译:在本文中,我们探索了不同的卷积神经网络(CNN)架构,以提取到道路变化(TTLC)分类问题的时间内提取特征,用于公路驾驶功能。这些网络使用高级数据集进行培训,这是德国高速公路上现实驾驶的公共数据集。调查的CNN达到大致相同的测试精度,乍一看似乎表明所有算法提取了相同质量的特征。然而,我们争辩说,单独的测试精度不足以验证算法提取的特征。作为一种验证的形式,我们提出了一种两宗教士方法来证实提取特征的质量。在第一阶段,我们在特征上应用聚类算法,并调查特征集群如何了解外部聚类验证度量和关于专家知识的逻辑。在第二阶段,我们使用最先进的维度减少技术来视觉支持第一阶段的验证阶段的结果。最后,我们的分析表明,不同的CNN,具有大致相同的准确性,提取不同质量的特征。这可能导致用户选择其他人的CNN架构。

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