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Transitional Asymmetric Non-local Neural Networks for Real-World Dirt Road Segmentation

机译:过渡不对称非局部神经网络,实现现实世界污垢路段

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Understanding images by predicting pixel-level semantic classes is a fundamental task in computer vision and is one of the most important techniques for autonomous driving. Recent approaches based on deep convolutional neural networks have dramatically improved the speed and accuracy of semantic segmentation on paved road datasets, however, dirt roads have yet to be systematically studied. Dirt roads do not contain clear boundaries between drivable and non-drivable regions; and thus, this difficulty must be overcome for the realization of fully autonomous vehicles. The key idea of our approach is to apply lightweight non-local blocks to reinforce stage-wise long-range dependencies in encoder-decoder style backbone networks. Experiments on 4,687 images of a dirt road dataset show that our transitional asymmetric non-local neural networks present a higher accuracy with lower computational costs compared to state-of-the-art models.
机译:通过预测像素级语义类了解图像是计算机视觉中的基本任务,是自主驾驶最重要的技术之一。 基于深度卷积神经网络的最近方法大大提高了铺设道路数据集的语义分割的速度和准确性,然而,尚未系统地研究了土路。 泥土道路不含可驱动和无驱动区域之间的清晰边界; 因此,必须克服这种困难来实现完全自治车辆。 我们方法的关键概念是应用轻量级非本地块,以加强编码器解码器样式骨干网络中的阶段明智的远程依赖项。 4,687个Dirt Road DataSet图像的实验表明,与最先进的模型相比,我们的过渡不对称非局部神经网络具有较低的计算成本的更高的准确性。

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