Abstract

Sea-based infrared search and track (IRST) is important for homeland security by detecting missiles and asymmetric boats. This paper proposes a novel scheme to interpret various infrared scenes by classifying the infrared background types and detecting the coastal regions in omni-directional images. The background type or region-selective small infrared target detector should be deployed to maximize the detection rate and to minimize the number of false alarms. A spatial filter-based small target detector is suitable for identifying stationary incoming targets in remote sea areas with sky only. Many false detections can occur if there is an image sector containing a coastal region, due to ground clutter and the difficulty in finding true targets using the same spatial filter-based detector. A temporal filter-based detector was used to handle these problems. Therefore, the scene type and coastal region information is critical to the success of IRST in real-world applications. In this paper, the infrared scene type was determined using the relationships between the sensor line-of-sight (LOS) and a horizontal line in an image. The proposed coastal region detector can be activated if the background type of the probing sector is determined to be a coastal region. Coastal regions can be detected by fusing the region map and curve map. The experimental results on real infrared images highlight the feasibility of the proposed sea-based scene interpretation. In addition, the effects of the proposed scheme were analyzed further by applying region-adaptive small target detection.

Highlights

  • Infrared search and track (IRST) is an important technology for protecting the homeland from sea skimming missiles, multiple rocket launchers (MRLs), coastal guns and asymmetric boats [1]

  • One panoramic image consisted of 23 sector images, where one sector image covered a field of view of 15◦

  • The proposed infrared scene type classifier was evaluated for the two test sets

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Summary

Introduction

Infrared search and track (IRST) is an important technology for protecting the homeland from sea skimming missiles, multiple rocket launchers (MRLs), coastal guns and asymmetric boats [1]. Temporal filter-based methods use motion information to extract the targets from the background. Most of these small target detection algorithms use infrared images with a narrow field of view (NFOV) for specific backgrounds. Different types of small infrared target detection methods are needed to satisfy both the detection rate and false alarm rate. Coastal regions are relatively close to a ship This means that the target movement can be detected in an infrared image using temporal filters. The method was extended to an infrared scene interpretation by incorporating a background type classification with coastal region detection. A novel sea-based infrared scene interpretation method is proposed for the first time by cascading the background type classification and coastal region detection.

Proposed Infrared Scene Interpretation System
Properties of the Sea-Based IRST Background
Infrared Background Type Classification
Coastal Region Detection
Experimental Results
Conclusions and Discussion
Full Text
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