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Fast road scene segmentation using deep learning and scene-based models

机译:使用深度学习和基于场景的模型进行快速的道路场景分割

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Pixel-labeling approaches using semantic segmentation play an important role in road scene understanding. In recent years, deep learning approaches such as the deconvolutional neural network have been used for semantic segmentation, obtaining state-of-the-art results. However, the segmentation results have limited object delineation. In this paper, we adopt the de-convolutional neural network to perform the semantic segmentation of the road scene using colour and depth information. Moreover, we improve the network's limited object delineation within a computationally efficient framework using novel features that are learnt at the pixel-level and patch-level for different road scenes. The patch-level features represent the road scene geometry. On the other hand, the learnt pixel-level features represent the appearance and depth information. The features learnt for the different road scenes are indexed with the scene's pre-defined label. Following the indexing, the random forest classifier is trained to retrieve the relevant geometric and appearance-depth features for a given road scene. The retrieved features are then used to refine identified error regions in the initial semantic segmentation estimate. Our proposed algorithm is evaluated on an acquired dataset and compared with state-of-the-art baseline algorithms. We also perform a detailed parametric evaluation of our proposed framework. The experimental results show that our proposed algorithm reports better accuracy.
机译:使用语义分割的像素标记方法在道路场景理解中起着重要作用。近年来,深度学习方法(例如反卷积神经网络)已用于语义分割,从而获得了最新的结果。然而,分割结果具有有限的对象描绘。在本文中,我们采用反卷积神经网络使用颜色和深度信息对道路场景进行语义分割。此外,我们使用在像素级和补丁级针对不同道路场景学习的新颖功能,在计算有效的框架内改善了网络的有限对象描述。贴片级特征代表道路场景的几何形状。另一方面,学习到的像素级特征表示外观和深度信息。为不同的道路场景学习的特征通过场景的预定义标签进行索引。索引之后,训练随机森林分类器以检索给定道路场景的相关几何和外观深度特征。然后,将检索到的特征用于在初始语义分段估计中细化所标识的错误区域。我们提出的算法在获取的数据集上进行了评估,并与最新的基线算法进行了比较。我们还将对我们提出的框架进行详细的参数评估。实验结果表明,本文提出的算法具有更好的准确性。

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