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Fast Joint Object Detection and Viewpoint Estimation for Traffic Scene Understanding

机译:快速的联合目标检测和视点估计,以了解交通场景

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摘要

Environment perception is a critical enabler for automated driving systems since it allows a comprehensive understanding of traffic situations, which is a requirement to ensure safe and reliable operation. Among the different applications, obstacle identification is a primary module of the perception system. We propose a vision-based method built upon a deep convolutional neural network that can reason simultaneously about the location of objects in the image and their orientations on the ground plane. The same set of convolutional layers is used for the different tasks involved, avoiding the repetition of computations over the same image. Experiments on the KITTI dataset show that our efficiency-oriented method achieves state-of-the-art accuracies for object detection and viewpoint estimation, and is particularly suitable for the recognition of traffic situations from on-board vision systems. Code is available at https://github.com/cguindel/lsi-faster-rcnn.
机译:环境感知是自动驾驶系统的关键推动因素,因为它可以全面了解交通状况,这是确保安全可靠运行的要求。在不同的应用中,障碍物识别是感知系统的主要模块。我们提出了一种基于深度卷积神经网络的基于视觉的方法,该方法可以同时推理图像中对象的位置及其在地平面上的方向。相同的卷积层集用于涉及的不同任务,避免了在同一图像上重复计算。在KITTI数据集上进行的实验表明,我们的以效率为导向的方法在对象检测和视点估计方面达到了最先进的精度,特别适合从车载视觉系统识别交通情况。代码可在https://github.com/cguindel/lsi-faster-rcnn获得。

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