Correlation Filtering Algorithm of Infrared Spectral Data for Dim Target Tracking

IF 1 4区 物理与天体物理 Q3 PHYSICS, MATHEMATICAL
Wenjian Zheng, An Chang, Qi Wang, Jianing Shang, Mandi Cui
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引用次数: 0

Abstract

The correlation filtering algorithm of infrared spectral data for dim and small target tracking is studied to improve the tracking accuracy of small and weak targets and to track small and weak targets in real time. After the image noise reduction processing by the mean shift filtering algorithm, the infrared small and weak target image data model is constructed by using the denoised infrared small and weak target image. And the brightness value and position of unknown small and weak targets are obtained. The tracking and measurement model of small and weak targets is built. The joint probabilistic data association algorithm is used to calculate the probability that each measurement is associated with its possible source targets, and the particle filter is used to update the tracking status of small and weak targets to achieve real-time tracking of small and weak targets. The experimental results show that the algorithm can enhance the edge contour information of small and weak images, so as to accurately track small and weak targets moving in any track, and has good real-time tracking and accuracy. There is a small deviation between the tracking track of weak and small targets tracked by the algorithm and the actual track, and the root mean square difference of tracking weak and small targets is within 2 pixels. In addition, the detection probability of detecting weak and small targets is less affected by SNR environmental factors.
用于弱小目标跟踪的红外光谱数据相关滤波算法
为了提高弱小目标的跟踪精度,实现对弱小目标的实时跟踪,研究了弱小目标跟踪红外光谱数据的相关滤波算法。经过均值移位滤波算法对图像进行降噪处理后,利用去噪后的红外弱小目标图像构建红外弱小目标图像数据模型。得到未知弱小目标的亮度值和位置。建立了弱小目标的跟踪测量模型。采用联合概率数据关联算法计算每次测量与其可能源目标关联的概率,采用粒子滤波更新弱小目标的跟踪状态,实现对弱小目标的实时跟踪。实验结果表明,该算法可以增强弱小图像的边缘轮廓信息,从而准确跟踪在任意轨迹上运动的弱小目标,具有良好的实时性和跟踪精度。算法跟踪的弱小目标跟踪轨迹与实际轨迹偏差较小,跟踪弱小目标的均方根差在2个像素以内。此外,检测弱小目标的检测概率受信噪比环境因素的影响较小。
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来源期刊
Advances in Mathematical Physics
Advances in Mathematical Physics 数学-应用数学
CiteScore
2.40
自引率
8.30%
发文量
151
审稿时长
>12 weeks
期刊介绍: Advances in Mathematical Physics publishes papers that seek to understand mathematical basis of physical phenomena, and solve problems in physics via mathematical approaches. The journal welcomes submissions from mathematical physicists, theoretical physicists, and mathematicians alike. As well as original research, Advances in Mathematical Physics also publishes focused review articles that examine the state of the art, identify emerging trends, and suggest future directions for developing fields.
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