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Robust Ground Target Detection by SAR and IR Sensor Fusion Using Adaboost-Based Feature Selection

机译:使用基于Adaboost的特征选择通过SAR和IR传感器融合进行可靠的地面目标检测

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摘要

Long-range ground targets are difficult to detect in a noisy cluttered environment using either synthetic aperture radar (SAR) images or infrared (IR) images. SAR-based detectors can provide a high detection rate with a high false alarm rate to background scatter noise. IR-based approaches can detect hot targets but are affected strongly by the weather conditions. This paper proposes a novel target detection method by decision-level SAR and IR fusion using an Adaboost-based machine learning scheme to achieve a high detection rate and low false alarm rate. The proposed method consists of individual detection, registration, and fusion architecture. This paper presents a single framework of a SAR and IR target detection method using modified Boolean map visual theory (modBMVT) and feature-selection based fusion. Previous methods applied different algorithms to detect SAR and IR targets because of the different physical image characteristics. One method that is optimized for IR target detection produces unsuccessful results in SAR target detection. This study examined the image characteristics and proposed a unified SAR and IR target detection method by inserting a median local average filter (MLAF, pre-filter) and an asymmetric morphological closing filter (AMCF, post-filter) into the BMVT. The original BMVT was optimized to detect small infrared targets. The proposed modBMVT can remove the thermal and scatter noise by the MLAF and detect extended targets by attaching the AMCF after the BMVT. Heterogeneous SAR and IR images were registered automatically using the proposed RANdom SAmple Region Consensus (RANSARC)-based homography optimization after a brute-force correspondence search using the detected target centers and regions. The final targets were detected by feature-selection based sensor fusion using Adaboost. The proposed method showed good SAR and IR target detection performance through feature selection-based decision fusion on a synthetic database generated by OKTAL-SE.
机译:使用合成孔径雷达(SAR)图像或红外(IR)图像,在嘈杂的杂波环境中很难检测到远距离地面目标。基于SAR的检测器可以提供很高的检测率和对背景散射噪声的高虚警率。基于红外的方法可以检测到高温目标,但受到天气条件的强烈影响。提出了一种基于Adaboost的机器学习方案,通过决策级SAR和IR融合实现目标检测的新方法,可以实现较高的检测率和较低的虚警率。所提出的方法包括个体检测,注册和融合架构。本文提出了使用改进的布尔图视觉理论(modBMVT)和基于特征选择的融合的SAR和IR目标检测方法的单一框架。由于物理图像特性的不同,先前的方法应用了不同的算法来检测SAR和IR目标。一种针对IR目标检测进行了优化的方法在SAR目标检测中产生了不成功的结果。这项研究检查了图像特征,并通过在BMVT中插入中值局部平均滤波器(MLAF,前置滤波器)和非对称形态闭合滤波器(AMCF,后置滤波器),提出了SAR和IR目标的统一检测方法。最初的BMVT经过优化,可以检测小型红外目标。提出的modBMVT可以通过MLAF消除热噪声和散射噪声,并可以通过在BMVT之后附加AMCF来检测扩展目标。在使用检测到的目标中心和区域进行蛮力对应搜索之后,使用拟议的基于RANdom SAmple Region Consensus(RANSARC)的单应性优化自动注册异类SAR和IR图像。使用Adaboost通过基于特征选择的传感器融合来检测最终目标。该方法通过基于特征选择的决策融合在OKTAL-SE生成的综合数据库上表现出良好的SAR和IR目标检测性能。

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