太赫兹科学与电子信息学报, 2023, 21 (9): 1109, 网络出版: 2024-01-19  

改进特征空间的红外弱小目标背景建模法

Infrared dim small target background modeling based on improved eigenspace mode
作者单位
1 宜宾学院智能制造学部, 四川宜宾 644000
2 广西科技大学广西土方机械协同创新中心, 广西柳州 545006
3 云南财经大学信息学院, 云南昆明 650221
4 中国科学院光电技术研究所, 四川成都 610209
摘要
为有效去除动态背景对弱小目标信号的干扰, 提出改进特征空间的红外弱小目标背景建模法来抑制背景。先采用改进的各向异性滤波算法从空域角度进行滤波以约束图像各个组分的差异, 紧接着取连续时间域上多帧滤波后的图像组成一个特征矩阵, 借助于主成分分析法进行特征分解, 最后将输入图像投影到特征空间上进行背景建模, 同时为了适应动态变化的背景, 在时域上以一定学习率来更新背景模型。实验结果表明, 提出的算法比传统的算法取得更好的背景估计效果, 结构相似性 SSIM、对比度增益 I和背景抑制因子 BIF分别大于 0.97、15.46和 5.25。
Abstract
A background modeling method of infrared dim small target based on improved eigenspace is proposed in order to effectively remove the interference of dynamic background on dim small target signal. Firstly, an improved anisotropic filtering algorithm is employed to filter from the spatial perspective to constrain the differences of each component of the image. Then, a feature matrix is formed from the filtered images in the continuous time domain, and the Principal Component Analysis (PCA) is adopted to perform feature decomposition. Finally, the input image is projected onto the eigenspace for background modeling. As to adapt to the dynamic background, the background model is updated with a certain learning rate in temporal domain. Experimental results show that the proposed algorithm achieves better background estimation effect than the traditional algorithm. The structural similarity SSIM, contrast gain I and background suppression factor BIF are greater than 0.97, 15.46 and 5.25 respectively
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樊香所, 文良华, 徐兴贵, 徐智勇, 冉兵. 改进特征空间的红外弱小目标背景建模法[J]. 太赫兹科学与电子信息学报, 2023, 21(9): 1109. FAN Xiangsuo, WEN Lianghua, XU Xinggui, XU Zhiyong, RAN Bing. Infrared dim small target background modeling based on improved eigenspace mode[J]. Journal of terahertz science and electronic information technology, 2023, 21(9): 1109.

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