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Pose-RCNN: Joint object detection and pose estimation using 3D object proposals

机译:Pose-RCNN:使用3D对象提案进行联合对象检测和姿态估计

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This paper presents a novel approach for joint object detection and orientation estimation in a single deep convolutional neural network utilizing proposals calculated from 3D data. For orientation estimation, we extend a R-CNN like architecture by several carefully designed layers. Two new object proposal methods are introduced, to make use of stereo as well as lidar data. Our experiments on the KITTI dataset show that by combining proposals of both domains, high recall can be achieved while keeping the number of proposals low. Furthermore, our method for joint detection and orientation estimation outperforms state of the art approaches for cyclists on the easy test scenario of the KITTI test dataset.
机译:本文提出了一种新的方法,该方法利用从3D数据计算出的建议,在单个深度卷积神经网络中进行联合目标检测和方向估计。对于方向估计,我们通过几个精心设计的层来扩展类似于R-CNN的体系结构。引入了两种新的对象建议方法,以利用立体声以及激光雷达数据。我们在KITTI数据集上进行的实验表明,通过结合两个领域的提案,可以在降低提案数量的同时实现较高的查全率。此外,在KITTI测试数据集的简单测试场景中,我们的联合检测和方向估计方法优于骑自行车者的最新方法。

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