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Interpolation-Based Object Detection Using Motion Vectors for Embedded Real-time Tracking Systems

机译:基于插值的对象检测使用运动向量进行嵌入式实时跟踪系统

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Deep convolutional neural networks (CNNs) have achieved outstanding performance in object detection, a crucial task in computer vision. With the computational intensiveness due to repeated convolutions, they consume large amount of power, making them difficult to apply in power-constrained embedded platforms. In this work, we present MVint, a power-efficient detection and tracking framework. MVint combines motion-vector-based interpolator and CNN-based detector to simultaneously achieve high accuracy and energy efficiency by utilizing motion vectors obtained inexpensively in the environments wherein encoding is conducted at the cameras. Through evaluations using MOT16 benchmark that evaluates multiple object tracking, we show MVint maintains 88% MOTA while reducing detection frequency down to 1/12. An implemention of MVint as a system prototype on Xilinx Zynq Ultra-Scale+ MPSoC ZCU102 confirmed that MVint achieves an ideal 12x FPS compared with a vanilla detection approach.
机译:深度卷积神经网络(CNNS)在对象检测中取得了出色的性能,计算机视觉中的一个至关重要的任务。由于重复卷积导致的计算强度,它们消耗了大量的功率,使得它们难以在功率约束的嵌入式平台中应用。在这项工作中,我们呈现MVINT,高效检测和跟踪框架。 MVINT将基于运动矢量的内插器和基于CNN的检测器相结合,同时通过利用廉价地在摄像机进行编码的环境中廉价地获得的运动矢量来同时实现高精度和能量效率。通过使用评估多个对象跟踪的MOT16基准测试的评估,我们将Mvint显示88%Mota,同时将检测频率降至1/12。 MVINT作为Xilinx Zynq超级+ MPSOC ZCU102上的系统原型的实施证实,Mvint与Vanilla检测方法相比实现了理想的12倍FP。

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