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A robust FLIR target detection employing an auto-convergent pulse coupled neural network

机译:采用自动收敛脉冲耦合神经网络的鲁棒FLIR目标检测

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摘要

Automatic target detection (ATD) of a small target along with its true shape from highly cluttered forward-looking infrared (FLIR) imagery is crucial. FLIR imagery is low contrast in nature, which makes it difficult to discriminate the target from its immediate background. Here, pulse-coupled neural network (PCNN) is extended with auto-convergent criteria to provide an efficient ATD tool. The proposed auto-convergent PCNN (AC-PCNN) segments the target from its background in an adaptive manner to identify the target region when the target is camouflaged or contains higher visual clutter. Then, selection of region of interest followed by template matching is augmented to capture the accurate shape of a target in a real scenario. The outcomes of the proposed method are validated through well-known statistical methods and found superior performance over other conventional methods.
机译:小型目标的自动目标检测(ATD)以及其来自高度杂乱的前瞻性红外线(FLIR)图像的真实形状是至关重要的。 Flir Imagery在性质上是低对比度,这使得难以从其直接背景区分目标。这里,脉冲耦合的神经网络(PCNN)与自动融合标准扩展以提供有效的ATD工具。所提出的自动收敛PCNN(AC-PCNN)以自适应方式将目标从其背景段分段以识别目标伪装或包含更高的视觉杂波时识别目标区域。然后,使用模板匹配的感兴趣区域的选择,以增强以捕获真实方案中目标的准确形状。通过众所周知的统计方法验证所提出的方法的结果,并在其他常规方法中发现了卓越的性能。

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  • 来源
    《Remote sensing letters 》 |2019年第9期| 639-648| 共10页
  • 作者单位

    School of Engineering London South Bank University London UK;

    School of Engineering London South Bank University London UK;

    Faculty of Science and Technology University of Paris-Est Creteil Paris France;

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  • 正文语种 eng
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