Abstract

To improve the detection of dim and small targets in infrared (IR) images containing high-intensity cloud clutter, a novel adaptive background suppression method is proposed. By using three-dimensional cooperative filtering and differential calculation, the different and complex background clutter is suppressed. To obtain the optimal parameters for the background suppression algorithm, an adaptive parameter optimization method is proposed. The adaptive parameter optimization problem is transformed into a multiobjective optimization problem in which the signal-to-clutter ratio gain and background suppression factor, which effectively reflect the background suppression performance, are chosen as the optimization objectives, and the parameters of the proposed background suppression algorithm are considered as the variables. To effectively solve the established multiobjective optimization problem, a particle swarm parameter optimization-based method is utilized. Experimental results indicate that the proposed adaptive background suppression method using these optimal parameters has good performance for IR images in real complex scenes, as well as performance superior to that of other baseline methods.

Highlights

  • Detecting small targets from IR images with complex backgrounds is a challenging task [1], [2]

  • THE MO_RING_PSO_SCD-BASED ADAPTIVE PARAMETER SELECTION METHOD After briefly introducing the multiobjective optimization problem constructed in this paper, the MO_Ring_PSO_SCD algorithm and the knee point selection method, we summarize the application of the MO_Ring_PSO_SCD algorithm in adaptive parameter selection for the background suppression algorithm, as follows: In summary, this paper uses an intelligent optimization algorithm to optimize the parameters of the background suppression algorithm and thereby obtain the optimal parameters in different sequences and the best background clutter suppression performance

  • The experiments using IR images of real complex scenes have verified its advantages: 1) The proposed adaptive background suppression method can effectively suppress a background with high-intensity cloud clutter and has better background suppression performance

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Summary

INTRODUCTION

Detecting small targets from IR images with complex backgrounds is a challenging task [1], [2]. This method (DBM3D+GMMF) estimates the background mean based on the output of a BM3D filter, which is one of the most efficient denoising algorithms [23], [24] These methods have excellent background suppression performance, since the temporal information is not utilized, the small targets may be suppressed along with the complicated background clutter. We treat the small target to be detected as a rare impulse noise and use the spatiotemporal information in the image sequence to suppress complex background clutter. This method takes advantage of three-dimensional cooperative filtering and differential calculation to achieve background suppression.

IR IMAGE MODEL
NOISE SUPPRESSION FOR THE CLOUD CLUTTER-SUPPRESSED IMAGE
FORMULATION OF THE PROBLEM OF OPTIMIZING ADAPTIVE PARAMETERS
OPTIMIZATION OBJECTIVES
THE LOCAL OPTIMIZATION STRATEGY
ADAPTIVE PARAMETER SELECTION METHOD
A BRIEF INTRODUCTION TO THE PSO ALGORITHM
THE CONCEPT OF PARETO OPTIMALITY
THE PROCEDURE FOR THE KNEE POINT SELECTION METHOD
EXPERIMENTAL IMAGES AND BASELINE METHODS
Findings
CONCLUSION
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