Abstract

In uniform infrared scenes with single sparse high-contrast small targets, most existing small target detection algorithms perform well. However, when encountering multiple and/or structurally sparse targets in complex backgrounds, these methods potentially lead to high missing and false alarm rate. In this paper, a novel and robust infrared single-frame small target detection is proposed via an effective integration of Schatten 1/2 quasi-norm regularization and reweighted sparse enhancement (RS1/2NIPI). Initially, to achieve a tighter approximation to the original low-rank regularized assumption, a nonconvex low-rank regularizer termed as Schatten 1/2 quasi-norm (S1/2N) is utilized to replace the traditional convex-relaxed nuclear norm. Then, a reweighted l1 norm with adaptive penalty serving as sparse enhancement strategy is employed in our model for suppressing non-target residuals. Finally, the small target detection task is reformulated as a problem of nonconvex low-rank matrix recovery with sparse reweighting. The resulted model falls into the workable scope of inexact augment Lagrangian algorithm, in which the S1/2N minimization subproblem can be efficiently solved by the designed softening half-thresholding operator. Extensive experimental results on several real infrared scene datasets validate the superiority of the proposed method over the state-of-the-arts with respect to background interference suppression and target extraction.

Highlights

  • Along with the advance of infrared imaging technology, small target detection has been attracting great research interests in infrared search and tracking applications, such as precision guidance, defense early warning, and maritime target searching [1,2]

  • It is easy to deduce that the augmented Lagrangian function of problem (8) is: we extend the proposed S1/2NIPI to a reweighted S1/2NIPI (RS1/2NIPI) model for small target detection, which is defined as: mA,iEn||A||1S/1/22 + λ||E||1,WE

  • These disturbances lead to great difficulties or challenges in the task of small target detection

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Summary

Introduction

Along with the advance of infrared imaging technology, small target detection has been attracting great research interests in infrared search and tracking applications, such as precision guidance, defense early warning, and maritime target searching [1,2]. Small targets may be buried in complex infrared scenes with low signal-to-clutter ratios deriving from high bright noise and strong thermal radiation clutters [3]. They tend to be weak and/or even negligibly small without concrete shape and discriminating textures owing to a long distance between projected targets and imaging sensor [4]. There are not enough features in infrared scenes to be incorporated into the designed detection method. These limitations make small target detection with high performance full of difficulties and challenges.

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