Abstract

In the advanced applications, based on infrared detection systems, the precise detection of small targets has become a tough work today. This becomes even more difficult when the background is highly dense in addition to the nature of small targets. The problem raised above is solved in various ways, including infrared patch image (IPI) based methods which are considered to have the best performance. In addition, the greater shrinkage of singular values in the methods based on IPI leads to the problem of nuclear norm minimization (NNM), which leads to the problem of incorrectly recognizing small targets in a highly complex background. Hence, this paper proposed a new method for infrared small target detection (ISTD) via total variation and partial sum minimization (TV-PSMSV). The proposed TV-PSMVS in this work basically replaces the IPI’s NNM with partial sum minimization (PSM) of singular values and, additionally, the total variance (TV) regularization term is inducted to the background patch image (BPI) to suppress the complex background and enhance the target object of interest. The mathematical solution of the proposed TV-PSMSV approach was performed using alternating direction multiplier (ADMM) to verify the proposed solution. The experimental evaluation using real and synthetic data set was performed, and the result revealed that the proposed TV-PSMSV outperformed existing referenced methods in the terms of background suppression factor (BSF) and the signal to gain ratio (SCRG).

Highlights

  • Warning systems, video surveillance systems, military services and infrared search and track systems (IRST) are all examples of applications that use infrared small target detection (ISTD) technology

  • total variance (TV)-PSMSVmethod methodisisvalivaldated against the synthetic image sequences

  • It can be concluded that the suggested strategy of TV-PSMSV outperformed the mentioned current methods in terms of enhancement as well as background suppression

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Summary

Introduction

Video surveillance systems, military services and infrared search and track systems (IRST) are all examples of applications that use infrared small target detection (ISTD) technology. To estimate the precise location of small targets, SD approaches such as 3-D matching filters [3,4] use both spatial and temporal information in the image. Current target-background separation approaches, such as IPI [1], WIPI [18], and [19], use NNM to restrict the BPI. Instead of using NNM, the proposed method used PSMSV [31] to estimate background owing to inadequate samples. This is because PSMSV retains the larger singular values and minimises noise. (sd.) of of10, 20,(c) and (e) Background suppression (sd.) of 20, and (e) Background suppression Figure 4d.

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