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Sparse Representation for Infrared Dim Target Detection via a Discriminative Over-Complete Dictionary Learned Online

机译:通过在线学习的判别式过度完成字典进行红外昏暗目标检测的稀疏表示

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摘要

It is difficult for structural over-complete dictionaries such as the Gabor function and discriminative over-complete dictionary, which are learned offline and classified manually, to represent natural images with the goal of ideal sparseness and to enhance the difference between background clutter and target signals. This paper proposes an infrared dim target detection approach based on sparse representation on a discriminative over-complete dictionary. An adaptive morphological over-complete dictionary is trained and constructed online according to the content of infrared image by K-singular value decomposition (K-SVD) algorithm. Then the adaptive morphological over-complete dictionary is divided automatically into a target over-complete dictionary describing target signals, and a background over-complete dictionary embedding background by the criteria that the atoms in the target over-complete dictionary could be decomposed more sparsely based on a Gaussian over-complete dictionary than the one in the background over-complete dictionary. This discriminative over-complete dictionary can not only capture significant features of background clutter and dim targets better than a structural over-complete dictionary, but also strengthens the sparse feature difference between background and target more efficiently than a discriminative over-complete dictionary learned offline and classified manually. The target and background clutter can be sparsely decomposed over their corresponding over-complete dictionaries, yet couldn't be sparsely decomposed based on their opposite over-complete dictionary, so their residuals after reconstruction by the prescribed number of target and background atoms differ very visibly. Some experiments are included and the results show that this proposed approach could not only improve the sparsity more efficiently, but also enhance the performance of small target detection more effectively.
机译:脱机学习并手动分类的结构性超完备字典(例如Gabor函数和有区别的超完备字典)很难以理想稀疏为目标来表示自然图像,并且难以增强背景杂波和目标信号之间的差异。本文提出了一种基于稀疏表示的判别式超完备字典的红外暗淡目标检测方法。通过K奇异值分解(K-SVD)算法根据红外图像的内容对自适应形态学超完备字典进行在线训练和构建。然后,将自适应形态学超完备字典自动划分为描述目标信号的目标超完备字典,并根据目标超完备字典中的原子可以更稀疏地分解的标准将背景超完备字典嵌入背景在高斯超完备字典中比在背景超完备字典中的字典高。该区别性过度完成字典不仅可以比结构性过度完成字典更好地捕获背景杂波和暗淡目标的重要特征,而且比离线学习和学习的区别性过度完成字典更有效地增强了背景和目标之间的稀疏特征差异。手动分类。目标杂波和背景杂波可以在其对应的过度完备字典上进行稀疏分解,但不能根据其相对的过度完备字典进行稀疏分解,因此在重构后它们的残差与指定数目的目标原子和背景原子非常不同。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小目标检测的性能。

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