基于去雾增强和张量恢复的红外小目标检测

Infrared small target detection based on dehazing enhancement and tensor recovery

  • 摘要: 为解决红外块张量模型中利用核范数难以找到张量秩的非凸逼近,得到的非最优解进而影响红外小目标检测,提出了一种基于去雾增强和张量恢复的红外小目标检测算法。首先,利用改进后的暗通道算法对红外图像去雾增强,提高清晰度的同时间接增强了红外图像中背景的低秩性;其次,筛选匹配的张量正面切片去构建红外块张量模型,在张量奇异值分解的框架下,将检测任务转化为张量恢复问题;最后,设计一种快速算法恢复出红外图像中的低秩成分和稀疏成分,运算简单降低算法复杂度。相较于滤波和人类视觉系统的方法,该算法在复杂背景下的误检率平均下降16.6%,在常见的高亮背景区域中检测性能良好,误检率可降低33%。实验结果表明:该算法可以适用于复杂场景,剔除潜在的虚警点。

     

    Abstract: To solve the problem that it is hard to find the nonconvex approximation of tensor rank by using nuclear norm in infrared patch tensor model, the obtained non optimal solution further affects. For infrared small target detection, an infrared small target detection algorithm based on dehazing enhancement and tensor recovery is proposed. Firstly, the improved dark channel algorithm is used to dehaze and enhance the infrared image, which improves the definition and indirectly enhances the low rank of the background in the infrared image; Secondly, the matching tensor frontal slices are selected to construct the infrared patch tensor model. Under the framework of tensor singular value decomposition, the detection task is transformed into tensor recovery problem; Finally, a fast algorithm is designed to recover the low rank components and sparse components in the infrared image, which is simple and reduces the complexity of the algorithm. Compared with the methods of filtering and human visual system, the false detection rate of the algorithm in complex background is reduced by 16.6% on average. In common highlighted background areas, the detection performance is good, and the false detection rate can be reduced by 33%. Experimental results show that the algorithm can be applied to complex scenes and eliminate potential false alarm points.

     

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