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Wavelet-Based Contourlet Transform and Kurtosis Map for Infrared Small Target Detection in Complex Background

机译:基于小波的Contourlet变换和峰态图在复杂背景下的红外小目标检测

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摘要

Wavelet-based Contourlet transform (WBCT) is a typical Multi-scale Geometric Analysis (MGA) method, it is a powerful technique to suppress background and enhance the edge of target. However, in the small target detection with the complex background, WBCT always lead to a high false alarm rate. In this paper, we present an efficient and robust method which utilizes WBCT method in conjunction with kurtosis model for the infrared small target detection in complex background. We mainly made two contributions. The first, WBCT method is introduced as a preprocessing step, and meanwhile we present an adaptive threshold selection strategy for the selection of WBCT coefficients of different scales and different directions, as a result, the most background clutters are suppressed in this stage. The second, a kurtosis saliency map is obtained by using a local kurtosis operator. In the kurtosis saliency map, a slide window and its corresponding mean and variance is defined to locate the area where target exists, and subsequently an adaptive threshold segment mechanism is utilized to pick out the small target from the selected area. Extensive experimental results demonstrate that, compared with the contrast methods, the proposed method can achieve satisfactory performance, and it is superior in detection rate, false alarm rate and ROC curve especially in complex background.
机译:基于小波的Contourlet变换(WBCT)是一种典型的多尺度几何分析(MGA)方法,它是抑制背景并增强目标边缘的强大技术。但是,在背景复杂的小目标检测中,WBCT总是导致较高的误报率。在本文中,我们提出了一种有效且鲁棒的方法,该方法将WBCT方法与峰度模型结合起来用于复杂背景下的红外小目标检测。我们主要做出了两个贡献。首先介绍了WBCT方法作为预处理步骤,与此同时,我们提出了一种自适应阈值选择策略,用于选择不同比例和不同方向的WBCT系数,从而在该阶段抑制了大多数背景杂波。第二,通过使用本地峰度算符获得峰度显着图。在峰度显着图中,定义了滑动窗口及其相应的均值和方差以定位目标存在的区域,随后利用自适应阈值分段机制从选定区域中挑选出小的目标。大量的实验结果表明,与对比方法相比,该方法具有令人满意的性能,在复杂背景下尤其是在检测率,误报率和ROC曲线方面具有优势。

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