论文标题
部分可观测时空混沌系统的无模型预测
HODET: Hybrid Object DEtection and Tracking using mmWave Radar and Visual Sensors
论文作者
论文摘要
图像传感器已在汽车应用中进行了大量探索,以避免碰撞和自主权水平。因此,它需要一定程度的亮度,因此,在夜间操作中使用图像传感器或黑暗条件可能会出现问题,而雾气(例如雾)。已使用雷达传感器来帮助涵盖可见的光谱摄像头各种环境挑战。 Edge Computing技术有可能解决许多问题,例如实时处理要求,从拥挤服务器中卸载以及尺寸,重量,功率和成本(SWAP-C)约束。本文提出了一种新型混合物体检测和跟踪(HODET),并使用边缘的MMWave雷达和视觉传感器。 HODET是通过同时使用图像和雷达传感器同时使用对象检测,跟踪和识别算法的低交换C电子的计算应用。虽然单独的机器视觉摄像头可以估计物体的距离,但雷达传感器将提供准确的距离和移动向量。可以利用这种附加数据的准确性来进一步区分检测到的对象,以防止欺骗攻击。选择了现实世界中的智能社区公共安全监控方案,以验证HODET的有效性,该方案检测到,跟踪感兴趣的对象并确定可疑活动。实验结果证明了该方法的可行性。
Image sensors have been explored heavily in automotive applications for collision avoidance and varying levels of autonomy. It requires a degree of brightness, therefore, the use of an image sensor in nighttime operation or dark conditions can be problematic along with challenging weather such as fog. Radar sensors have been employed to help cover the various environmental challenges with visible spectrum cameras. Edge computing technology has the potential to address a number of issues such as real-time processing requirements, off-loading of processing from congested servers, and size, weight, power, and cost (SWaP-C) constraints. This paper proposes a novel Hybrid Object DEtection and Tracking (HODET) using mmWave Radar and Visual Sensors at the edge. The HODET is a computing application of low SWaP-C electronics performing object detection, tracking and identification algorithms with the simultaneous use of image and radar sensors. While the machine vision camera alone could estimate the distance of an object, the radar sensor will provide an accurate distance and vector of movement. This additional data accuracy can be leveraged to further discriminate a detected object to protect against spoofing attacks. A real-world smart community public safety monitoring scenario is selected to verify the effectiveness of HODET, which detects, tracks objects of interests and identify suspicious activities. The experimental results demonstrate the feasibility of the approach.