随时激光雷达:截止日期感知的3D目标检测

Ahmet Soyyigit, Shuochao Yao, H. Yun
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引用次数: 3

摘要

在这项工作中,我们提出了一种新的调度框架,使基于深度神经网络(DNN)的三维目标检测管道能够随时感知。我们重点研究了计算代价昂贵的区域建议网络(RPN)和每类别多头检测器组件,它们在3D目标检测管道中很常见,并使它们具有时间感知。我们提出了一种调度算法,该算法可以智能地选择组件的子集,从而在运行中进行有效的时间和精度权衡。我们通过估计将先前检测到的物体投影到当前场景中,从而最小化跳过某些神经网络子组件的精度损失。我们将我们的方法应用于最先进的3D物体检测网络PointPillars,并使用nuScenes数据集评估其在Jetson Xavier AGX上的性能。与基线相比,我们的方法在各种截止日期约束下显着提高了网络的准确性。
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Anytime-Lidar: Deadline-aware 3D Object Detection
In this work, we present a novel scheduling frame-work enabling anytime perception for deep neural network (DNN) based 3D object detection pipelines. We focus on computationally expensive region proposal network (RPN) and per-category multi-head detector components, which are common in 3D object detection pipelines, and make them deadline-aware. We propose a scheduling algorithm, which intelligently selects the subset of the components to make effective time and accuracy trade-off on the fly. We minimize accuracy loss of skipping some of the neural network sub-components by projecting previously detected objects onto the current scene through estimations. We apply our approach to a state-of-art 3D object detection network, PointPillars, and evaluate its performance on Jetson Xavier AGX using nuScenes dataset. Compared to the baselines, our approach significantly improve the network’s accuracy under various deadline constraints.
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CiteScore
1.70
自引率
14.30%
发文量
17
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