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Enhanced Object Detection in Bird's Eye View Using 3D Global Context Inferred From Lidar Point Data

机译:使用从激光雷达点数据推断出的3D全局上下文增强鸟瞰图中的对象检测

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In this paper, we present a new deep neural network architecture, which detects objects in bird's eye view (BEV) using Lidar sensor data in autonomous driving scenarios. The key idea of the proposed method is to improve the accuracy of the object detection by exploiting the 3D global context provided by the whole set of Lidar points. The overall structure of the proposed method consists of two parts: 1) the detection core network (DetNet) and 2) the context extraction network (ConNet). First, the DetNet generates the BEV representation by projecting the Lidar points into the BEV plane and applies the CNN to extract the feature maps locally activated on the objects. The ConNet directly processes the whole set of the Lidar points to produce the 1 × 1 × k feature vector capturing the 3D geometrical structure of the surrounding in the global scale. The context vector produced by the ConNet is concatenated to each pixel of the feature maps obtained by the DetNet. The combined feature maps are used to regress the oriented bounding box and identify the category of the object. The experiments evaluated on the public KITTI dataset show that the use of the context feature offers the significant performance gain over the baseline and the proposed object detector achieves the competitive performance as compared to the state of the art 3D object detectors.
机译:在本文中,我们提出了一种新的深度神经网络架构,该架构可在自动驾驶场景中使用激光雷达传感器数据在鸟瞰(BEV)中检测物体。提出的方法的关键思想是通过利用由整个激光雷达点集提供的3D全局上下文来提高对象检测的准确性。所提出的方法的总体结构包括两部分:1)检测核心网络(DetNet)和2)上下文提取网络(ConNet)。首先,DetNet通过将激光雷达点投影到BEV平面中来生成BEV表示,并应用CNN提取在对象上本地激活的特征图。 ConNet直接处理整个激光雷达点集,以产生1×1×k特征向量,以捕获全球范围内周围环境的3D几何结构。由ConNet生成的上下文向量被链接到由DetNet获得的特征图的每个像素。组合的特征图用于回归定向的边界框并标识对象的类别。在公共KITTI数据集上评估的实验表明,上下文特征的使用提供了超过基线的显着性能提升,并且与现有的3D对象检测器相比,所提出的对象检测器实现了竞争性性能。

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