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Camera-Radar Data Fusion for Target Detection via Kalman Filter and Bayesian Estimation

机译:通过卡尔曼滤波器和贝叶斯估计的目标检测相机雷达数据融合

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Target detection is essential to the advanced driving assistance system (ADAS) and automatic driving. And the data fusion of millimeter wave radar and camera could provide more accurate and complete information of targets and enhance the environmental perception performance. In this paper, a method of vehicle and pedestrian detection based on the data fusion of millimeter wave radar and camera is proposed to improve the target distance estimation accuracy. The first step is the targets data acquisition. A deep learning model called Single Shot MultiBox Detector (SSD) is utilized for targets detection in consecutive video frames captured by camera and further optimized for high real-time performance and accuracy. Secondly, the coordinate system of camera and radar are unified by coordinate transformation matrix. Then, the parallel Kalman filter is used to track the targets detected by radar and camera respectively. Since targets data provided by the camera and radar are different, different Kalman filters are designed to achieve the tracking process. Finally, the targets data are fused based on Bayesian Estimation. At first, several simulation experiments were designed to test and optimize the proposed method, then the real data was used to prove further. Through experiments, it shows that the measurement noise can be considerably reduced by Kalman filter and the fusion algorithm could improve the estimation accuracy.
机译:目标检测对于先进的驾驶辅助系统(ADA)和自动驾驶至关重要。并且毫米波雷达和相机的数据融合可以提供更准确和完整的目标信息,并提高环境感知性能。本文提出了一种基于毫米波雷达和相机数据融合的车辆和行人检测方法,提高了目标距离估计精度。第一步是目标数据采集。一种被称为单次Multibox检测器(SSD)的深度学习模型用于由摄像机捕获的连续视频帧中的目标检测,并进一步优化了高实时性能和准确性。其次,通过坐标变换矩阵统一相机和雷达的坐标系。然后,并行卡尔曼滤波器用于分别跟踪雷达和相机检测的目标。由于相机和雷达提供的目标数据不同,因此不同的卡尔曼滤波器旨在实现跟踪过程。最后,目标数据基于贝叶斯估计融合。首先,若干模拟实验旨在测试和优化所提出的方法,然后使用实际数据进一步证明。通过实验,它表明,通过卡尔曼滤波器可以显着降低测量噪声,并且融合算法可以提高估计精度。

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