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基于卡尔曼滤波改进压缩感知算法的车辆目标跟踪
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Vehicle Target Tracking Based on Kalman Filtering Improved Compressed Sensing Algorithm
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    摘要:

    针对传统的基于压缩感知技术的目标跟踪算法存在的跟踪漂移问题,提出了一种采用改进压缩感知算法和卡尔曼滤波方法相结合的车辆目标跟踪算法. 首先,通过传统压缩感知目标跟踪算法识别出本帧目标存在概率最大的区域得到观测值; 其次,利用卡尔曼滤波预测本帧的跟踪轨迹得到预测值,通过卡尔曼滤波增益系数对预测值与观测值进行修正,获得最终目标跟踪结果; 最后,在修正后的目标区域周围进行正负样本采样以实现朴素贝叶斯分类器更新,进而实现目标跟踪轨迹的实时更新. 通过实验室试验以及野外实测验证了所提方法的可行性,相较于基于压缩感知技术的目标跟踪算法,本文所提方法的跟踪结果平均误差分别降低了48%和89%,跟踪轨迹更加趋近车辆真实运动轨迹.

    Abstract:

    Aiming at the tracking-shift of traditional target tracking algorithms based on compressed sensing technology, a vehicle target tracking algorithm based on Kalman filtering improved compressed sensing algorithm was proposed in this paper. Firstly, the observed value was obtained by identifying the region with the highest probability of target existence in this frame based on the traditional compressed sensing target tracking algorithm. Secondly, the Kalman filter was used to predict the tracking trajectory of this frame so as to obtain the predicted value, and the Kalman filter gain coefficient was used to correct the predicted value and the observed value to obtain the final target tracking result. Finally, positive and negative samples were taken around the corrected target area to realize the updating of naive Bayes classifiers, and then the real-time updating of target tracking trajectory was achieved. The feasibility of the proposed method was verified by laboratory tests and field experiments. The average tracking error of the proposed method is reduced by 48% and 89%, respectively, compared with the target tracking algorithm based on compressed sensing technology. The tracking trajectory was closer to the real vehicle trajectory.

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周云 ,胡锦楠 ?,赵瑜 ,朱正荣 ,郝官旺 .基于卡尔曼滤波改进压缩感知算法的车辆目标跟踪[J].湖南大学学报:自然科学版,2023,(1):11~21

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  • 在线发布日期: 2023-02-16
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