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Detecting Lane and Road Markings at A Distance with Perspective Transformer Layers

机译:用透视变压器层检测车道和道路标记

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Accurate detection of lane and road markings is a task of great importance for intelligent vehicles. In existing approaches, the detection accuracy often degrades with the increasing distance. This is due to the fact that distant lane and road markings occupy a small number of pixels in the image, and scales of lane and road markings are inconsistent at various distances and perspectives. The Inverse Perspective Mapping (IPM) can be used to eliminate the perspective distortion, but the inherent interpolation can lead to artifacts especially around distant lane and road markings and thus has a negative impact on the accuracy of lane marking detection and segmentation. To solve this problem, we adopt the Encoder-Decoder architecture in Fully Convolutional Networks and leverage the idea of Spatial Transformer Networks to introduce a novel semantic segmentation neural network. This approach decomposes the IPM process into multiple consecutive differentiable homography transform layers, which are called “Perspective Transformer Layers Furthermore, the interpolated feature map is refined by subsequent convolutional layers” thus reducing the artifacts and improving the accuracy. The effectiveness of the proposed method in lane marking detection is validated on two public datasets: TuSimple and ApolloScape.
机译:准确地检测车道和道路标记是对智能车辆非常重要的任务。在现有方法中,检测精度通常随着距离的增加而劣化。这是由于遥远的车道和道路标记占据了图像中的少量像素,并且车道和道路标记的尺度在各种距离和视角不一致。逆透视映射(IPM)可用于消除透视失真,但是固有的内插可以导致尤其是遥控车道和道路标记的伪像,因此对车道标记检测和分割的准确性产生负面影响。为了解决这个问题,我们采用完全卷积网络中的编码器解码器架构,利用空间变压器网络的想法,以引入新颖的语义分割神经网络。该方法将IPM过程分解为多个连续可分散的同性变换层,其被称为“透视变压器层进一步,内插特征图由后续的卷积层改进”因此减少了伪像并提高了准确性。在两个公共数据集中验证了在车道标记检测中提出的方法的有效性:Tusimple和Apolloscape。

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