Infrared dim and small target detection based on total variation and multiple noise constraints modeling

Xiaowen Wang, Xiaoyan Xia, Qiao Li, Wei Xue
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Abstract

To improve the ability of infrared dim small target detection algorithm based on traditional infrared patch-image (IPI) model, a new detection model based on total variation and multiple noise constraints is proposed. We firstly transform the original infrared image into an IPI, and then the total variational regularization constrains the background patch-image in order to reduce the noise on the target image. In the meantime, the edge information of the image can be preserved to avoid excessive smoothness of the restored background image. Additionally, considering the lack of noise distribution in the patch-image, the combined and norm are introduced to describe the noise more accurately. The experimental results show that the proposed method can suppress the background clutter better and improve detection performance effectively.
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基于全变分和多噪声约束建模的红外弱小目标检测
为了提高基于传统红外补丁图像(IPI)模型的红外弱小目标检测算法的能力,提出了一种基于全变分和多噪声约束的红外弱小目标检测模型。首先将原始红外图像转换为IPI,然后对背景块图像进行全变分正则化约束,以降低目标图像上的噪声。同时,可以保留图像的边缘信息,避免恢复后的背景图像过于平滑。此外,考虑到图像中噪声分布的不足,引入了组合范数来更准确地描述噪声。实验结果表明,该方法能较好地抑制背景杂波,有效提高检测性能。
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