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Two Algorithms for the Detection and Tracking of Moving Vehicle Targets in Aerial Infrared Image Sequences

机译:航空红外图像序列中移动车辆目标的检测和跟踪的两种算法

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In this paper, by analyzing the characteristics of infrared moving targets, a Symmetric Frame Differencing Target Detection algorithm based on local clustering segmentation is proposed. In consideration of the high real-time performance and accuracy of traditional symmetric differencing, this novel algorithm uses local grayscale clustering to accomplish target detection after carrying out symmetric frame differencing to locate the regions of change. In addition, the mean shift tracking algorithm is also improved to solve the problem of missed targets caused by error convergence. As a result, a kernel-based mean shift target tracking algorithm based on detection updates is also proposed. This tracking algorithm makes use of the interaction between detection and tracking to correct the tracking errors in real time and to realize robust target tracking in complex scenes. In addition, the validity, robustness and stability of the proposed algorithms are all verified by experiments on mid-infrared aerial sequences with vehicles as targets.
机译:通过分析红外运动目标的特征,提出了一种基于局部聚类分割的对称帧差分目标检测算法。考虑到传统对称差分的高实时性和准确性,该新算法在执行对称帧差分以定位变化区域后,使用局部灰度聚类来完成目标检测。另外,均值漂移跟踪算法也得到了改进,解决了由于误差收敛而导致目标丢失的问题。结果,提出了一种基于检测更新的基于核的均值漂移目标跟踪算法。该跟踪算法利用检测和跟踪之间的相互作用来实时纠正跟踪错误,并在复杂场景中实现强大的目标跟踪。此外,通过以车辆为目标的中红外航拍实验,验证了所提算法的有效性,鲁棒性和稳定性。

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