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Usage of Asymetric Small Binning to Compute Histogram of Oriented Gradients for Edge Computing Image Sensors

机译:不对称小型衬砌的用途来计算边缘计算图像传感器面向梯度的直方图

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In case of multiple imaging sensors used in different networks (home security, surveillance, automotive, industrial), there is a challenge to perform object detection algorithms in real time, even on the cloud, for a large number of sensors. This is why there is an intensive effort in the industry to move object detection processing on the edge, with the benefits of reducing the bandwidth needs and allowing for scalability in large networks. In this paper we present a hardware friendly optimization technique to compute Histogram of Oriented Gradients (HOG) on the edge, by approximating the HOG orientation as a multitude of small bins. The technique is implemented in RTL for FPGA or ASIC and serves as the first step in a standard object detection algorithm (using Histogram of Oriented Gradients as feature extractor and Support Vector Machine as the detection algorithm). We verified the results of the proposed optimizations for errors by comparison to a reference method and the overall object detection algorithm for robustness.
机译:在不同网络中使用的多个成像传感器的情况下(家庭安全,监控,工业,工业),对于大量传感器,即使在云上实时执行对象检测算法存在挑战。这就是为什么在行业中存在密集的努力,以便在边缘移动对象检测处理,具有降低带宽需求的好处,并允许在大型网络中进行可扩展性。在本文中,我们通过将猪定向视为众多小型箱,来提出一种硬件友好的优化技术,以计算边缘的导向梯度(HOG)的直方图。该技术在FPGA或ASIC中实现在RTL中,并用作标准对象检测算法的第一步(使用定向梯度的直方图作为特征提取器并支持向量机作为检测算法)。通过与鲁棒性的参考方法和整体对象检测算法比较,我们验证了所提出的误差的结果。

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