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Infrared small moving target detection algorithm based on joint spatio-temporal sparse recovery

机译:基于联合时空稀疏恢复的红外小目标检测算法

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摘要

A dim small moving target detection algorithm based on joint spatio-temporal sparse recovery is proposed in this paper. A spatio-temporal over-complete dictionary is firstly trained from infrared image sequence, and it can characterize not only motion information but also morphological feature. In the spatio-temporal over-complete dictionary, the spatio-temporal atom is then classified as target spatio-temporal atom building target spatio-temporal over-complete dictionary, which describes moving target, and background spatio-temporal atom constructing background spatio-temporal over-complete dictionary, which embeds background clutter. Infrared image sequence is decomposed on the union of target spatio-temporal over-complete dictionary and background spatio-temporal over-complete dictionary. The residual reconstructed by its homologous spatio-temporal over-complete dictionary is very little, yet the residual recovered by its heterogonous spatio-temporal over-complete dictionary is quite large. Therefore, their residuals after decomposing and reconstruction by the joint spatio-temporal sparse recovery would differ so distinctly that it is adopted to decide the signal is from target or background. Some experiments are induced and the experimental results show this proposed approach could not only improve the sparsity more efficiently, but also enhance the target detection performance more effectively. (C) 2015 Elsevier B.V. All rights reserved.
机译:提出了一种基于时空联合稀疏恢复的弱小目标检测算法。首先从红外图像序列中训练时空超完备字典,它不仅可以表征运动信息,而且可以表征形态特征。然后在时空超完备字典中,将时空原子分类为目标时空原子建立目标时空超完备字典,该字典描述了移动目标,而背景时空原子构成背景时空原子过于完整的字典,其中嵌入了背景混乱的内容。在目标时空超完备字典与背景时空超完备字典的并集上分解红外图像序列。通过其同源时空超完备字典重构的残差很小,但是通过其异时空超完备字典恢复的残差很大。因此,在通过联合时空稀疏恢复进行分解和重建之后,它们的残差将非常不同,以至于可以用来确定信号来自目标还是背景。进行了一些实验,实验结果表明,该方法不仅可以更有效地提高稀疏度,而且可以更有效地提高目标检测性能。 (C)2015 Elsevier B.V.保留所有权利。

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