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Infrared Small Target Detection Using Homogeneity-Weighted Local Contrast Measure

机译:红外小目标检测使用均匀性加权局部对比度测量

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Detecting small targets in infrared (IR) image sequences is an important task in IR guidance systems. The clutter of complex backgrounds often submerges small targets, making detection difficult. Achieving high detection and low false alarm rates with complex backgrounds is a primary problem. We propose an IR small target detection method using our new homogeneity-weighted local contrast measure (HWLCM). Inspired by the ability of the human visual system (HVS) to determine saliency characteristics, we implement our method to use the local contrast features of the central and surrounding regions and the weighted homogeneity characteristics of the surrounding regions to enhance the target while suppressing the complex background. Our method divides each image into blocks with a sliding window for which the HWLCM is calculated. The HWLCM enhances the actual target and suppresses interference simultaneously. We apply an adaptive threshold to target region extraction to further refine the results. Our experimental results show that our proposed method is more effective than six comparable methods, especially in terms of the signal-to-clutter gain (SCRG) and background suppression factor (BSF) indicators.
机译:检测红外线(IR)图像序列中的小目标是IR引导系统中的重要任务。复杂背景的杂乱往往潜水,使得检测困难。实现高度检测和低误报率与复杂背景是一个主要问题。我们用新的均匀性加权局部对比度(HWLCM)提出IR小型目标检测方法。灵感来自人类视觉系统(HVS)确定显着性特性的能力,我们实施了使用中央和周围区域的局部对比度的方法以及周围区域的加权均匀特征,以增强目标,同时抑制复杂的同时增强目标背景。我们的方法将每个图像划分为具有滑动窗口的块,用于计算HWLCM。 HWLCM增强了实际目标并同时抑制干扰。我们将自适应阈值应用于目标区域提取以进一步改进结果。我们的实验结果表明,我们所提出的方法比六种类似的方法更有效,尤其是在信号到杂波增益(SCRG)和背景抑制因子(BSF)指示器方面。

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