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Detecting Small Size and Minimal Thermal Signature Targets in Infrared Imagery Using Biologically Inspired Vision

机译:使用生物启发的视觉检测红外图像中的小尺寸和最小的热签名目标

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摘要

Thermal infrared imaging provides an effective sensing modality for detecting small moving objects at long range. Typical challenges that limit the efficiency and robustness of the detection performance include sensor noise, minimal target contrast and cluttered backgrounds. These issues become more challenging when the targets are of small physical size and present minimal thermal signatures. In this paper, we experimentally show that a four-stage biologically inspired vision (BIV) model of the flying insect visual system have an excellent ability to overcome these challenges simultaneously. The early two stages of the model suppress spatio-temporal clutter and enhance spatial target contrast while compressing the signal in a computationally manageable bandwidth. The later two stages provide target motion enhancement and sub-pixel motion detection capabilities. To show the superiority of the BIV target detector over existing traditional detection methods, we perform extensive experiments and performance comparisons using high bit-depth, real-world infrared image sequences of small size and minimal thermal signature targets at long ranges. Our results show that the BIV target detector significantly outperformed 10 conventional spatial-only and spatiotemporal methods for infrared small target detection. The BIV target detector resulted in over 25 dB improvement in the median signal-to-clutter-ratio over the raw input and achieved 43% better detection rate than the best performing existing method.
机译:热红外成像提供有效的感测模式,用于检测长距离的小型移动物体。限制检测性能的效率和稳健性的典型挑战包括传感器噪声,最小目标对比度和杂乱的背景。当目标物理尺寸小并存在最小的热签名时,这些问题变得更具挑战性。在本文中,我们通过实验表明飞行昆虫视觉系统的四阶段生物启发视觉(BIV)模型具有同时克服这些挑战的绝佳能力。模型的早期两个阶段抑制了时空杂波,并增强空间目标对比度,同时在计算可管理的带宽中压缩信号。后面的两个阶段提供目标运动增强和子像素运动检测能力。为了在现有的传统检测方法上显示BIV目标检测器的优越性,我们使用长度范围的小尺寸和最小热签名目标的高位深度,现实世界红外图像序列进行广泛的实验和性能比较。我们的研究结果表明,BIV靶检测器显着优于10种常规空间型和时空方法,用于红外小目标检测。 BIV靶检测器在原始输入上的中值信号 - 杂波比中产生超过25dB的改善,并且比最佳性能的现有方法更好地获得了43%的检测率。

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