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Detection of Small Moving Targets in Staring Images Sequence with Complex Background and Low Contrast

机译:复杂背景和低对比度凝视图像序列中小移动目标的检测

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A detection algorithm for small moving targets is proposed. The new algorithm firstly utilizes convolution filtering for noise smoothing, and then a proposed preprocessing method based on the norm of the difference vectors of the processed images sequence is applied to remove most of low-frequency background. Furthermore, optic flow technique is adopted to segment the doubtful small moving targets from the subimage remained by preprocessing. Finally, the statistic information for each of doubtful small moving targets is calculated. From the statistical feature, a determining criterion is established to determine whether each of the doubtful small moving targets is a true target or not. Because the preprocessing approach can get rid of most of the low-frequency background effectively, the calculation quantity of the sequential processing by optic flow is decreased largely. The experiments in a designed test system prove that the proposed detection algorithm can detect small moving targets in 30fps, 512×512 pixels, staring images sequence with SNR no less than 3dB, and the correct detecting probability is up to 96%, which can satisfy the real time processing requirements in practice.
机译:提出了一种用于小移动目标的检测算法。新算法首先利用卷积滤波进行噪声平滑,然后应用基于处理的图像序列的差值矢量规范的提出的预处理方法来删除大多数低频背景。此外,采用光学流动技术分段通过预处理仍然存在的子图来分割令人怀疑的小型移动目标。最后,计算了每个可疑的小型移动目标的统计信息。根据统计特征,建立确定标准以确定每个可疑的小型移动目标是否是真正的目标。因为预处理方法有效地摆脱了大部分低频背景,所以通过光学流量的顺序处理的计算量在很大程度上降低。设计的测试系统中的实验证明,该检测算法可以检测30FPS中的小型移动目标,512×512像素,凝视图像序列,SNR不小于3DB,并且正确的检测概率高达96%,可以满足实际处理要求在实践中。

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