Abstract

Polarization imaging has the advantage of detecting artificial targets based on their intrinsic characteristics. However, with the development of camouflage materials and camouflage shielding performance, the anti-optical detection technology for camouflaged targets continues to improve. In this paper, we combine the advantages of polarization imaging and deep learning to achieve rapid detection of artificial targets camouflaged in natural scenes. Firstly, we propose a Stokes-vector-based parameter image to show the polarization specificity of the camouflaged artificial targets. Then, a detection method is proposed, which uses an Otsu segmentation algorithm and morphological operations to extract polarization signatures of the target from the proposed parameter image, and utilizes the extracted polarization signatures to highlight the camouflaged artificial targets. Finally, we improve a self-supervised deep learning network to enhance the low-light images, extending the application of our method into low illumination environment target detection. Experimental results demonstrate that our method can effectively detect the camouflaged artificial targets with a detection rate better than 80%, which has potential application value in the fields of military target detection, security monitoring, and remote sensing.

Highlights

  • P OLARIZATION, as one of the basic physical properties of light field besides amplitude, phase and frequency, has attracted increasing attention in recent years [1]

  • This paper aims to use passive polarization imaging technology to detect artificial targets camouflaged in natural scenes, and to develop image processing algorithm to enhance the detection of artificial targets

  • In order to effectively detect the artificial targets camouflaged in natural scenes under normal and low illumination conditions, we propose a detection method that combines polarization imaging and deep learning

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Summary

Introduction

P OLARIZATION, as one of the basic physical properties of light field besides amplitude, phase and frequency, has attracted increasing attention in recent years [1]. For the field of target detection, previous studies have shown that polarization imaging technology can improve the contrast between the artificial target and the natural background [8]–[12], and suppress cluttered signals from nature background [13], due to the material properties and surface roughness of Manuscript received July 5, 2021; revised August 1, 2021; accepted August 6, 2021. Passive polarization imaging in the infrared wavelength can improve the accuracy of detecting artificial targets [16]. The spatial resolution of current infrared polarization imagery is insufficient to display the surface texture information on the artificial target [17]. We consider passive polarization imaging in the visible wavelength to detect artificial targets camouflaged in nature scenes and obtain their surface texture information

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