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Infrared Dim and Small Target Detection Based on Stable Multisubspace Learning in Heterogeneous Scene

机译:异构场景中基于稳定多子空间学习的红外弱小目标检测

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摘要

Infrared (IR) dim and small target detection in a highly complex background play an important role in many applications, and remain a challenging problem. In this paper, a novel method named stable multisubspace learning is presented to deal with this problem. The new method takes into account the inner structure of actual images so that it overcomes the shortage of the traditional method. First, by analyzing the multisubspace structure of heterogeneous background data, a corresponding image model is proposed using subspace learning strategy. This model is also stable to noise interference. Second, an efficient optimization algorithm is designed to solve the proposed IR image model. By adding the proper postprocessing procedure, we can get the detection result. Experiments on simulation scenes and real scenes show that the proposed method has superior detection ability under heterogeneous background.
机译:在高度复杂的背景下,红外(IR)暗和小目标检测在许多应用中都起着重要作用,并且仍然是一个具有挑战性的问题。在本文中,提出了一种称为稳定多子空间学习的新方法来解决该问题。新方法考虑了实际图像的内部结构,从而克服了传统方法的不足。首先,通过分析异构背景数据的多子空间结构,提出了一种基于子空间学习策略的图像模型。该模型对噪声干扰也很稳定。其次,设计了一种有效的优化算法来求解所提出的红外图像模型。通过添加适当的后处理程序,我们可以获得检测结果。仿真场景和真实场景的实验表明,该方法在异构背景下具有较强的检测能力。

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