红外视频中受昆虫启发的小移动目标增强

M. Uzair, R. Brinkworth, A. Finn
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引用次数: 3

摘要

热红外成像是开发大距离小目标鲁棒检测方法的有效方式。然而,低目标对比度和高背景杂波是限制检测性能的两个主要挑战。我们提出了一种仿生红外视频帧的时空预处理方法来应对这些挑战。小飞虫早期视觉系统的神经元具有显著的噪声滤波、对比度增强、信号压缩和杂波抑制能力。这些神经元在之前使用线性和非线性处理层的组合分两个阶段进行计算建模。第一阶段模拟昆虫感光细胞的自适应时间过滤机制。它提高了信噪比,增强了目标背景辨别能力,扩大了信号变异性的可能范围。第二阶段在大单极细胞中模拟时空自适应滤波,消除冗余,提高目标对比度。为了展示这种仿生预处理所获得的性能增益,我们在真实世界的高位深红外视频序列上进行了小目标检测实验。结果表明,基于早期生物视觉的预处理显著提高了四种标准红外小运动目标检测技术的性能。具体来说,时空预处理将表现最好的方法的检测率(虚警率为10−5)提高了100%,其他方法的检测率提高了630%。我们的结果表明了生物处理的强大潜力,允许系统在更混乱的环境中检测更远距离的较小目标。
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Insect-Inspired Small Moving Target Enhancement in Infrared Videos
Thermal infrared imaging is an effective modality for developing robust methods of small target detection at large distances. However, low target contrast and high background clutter are two main challenges that limit the detection performance. We present bio-inspired spatio-temporal pre-processing of infrared video frames to deal with such challenges. The neurons in the early vision system of small flying insects have remarkable capability for noise filtering, contrast enhancement, signal compression and clutter suppression. These neurons were computationally modeled previously in two stages using a combination of linear and non-linear processing layers. The first stage models the adaptive temporal filtering mechanisms of insect photoreceptor cells. It improves the signal-to-noise-ratio, enhances target background discrimination and expands the possible range of signal variability. The second stage models the spatio-temporal adaptive filtering in the large monopolar cells that remove redundancy and increase target contrast. To show the performance gain achieved by such bio-inspired preprocessing, we perform small target detection experiments on real world high bit-depth infrared video sequences. Results show that the early biological vision based pre-processing significantly improves the performance of four standard infrared small moving target detection techniques. Specifically, the spatio-temporal preprocessing increase the detection rate (at 10−5 false alarm rate) of the best performing method by 100% and by up to 630% for the other methods. Our results are indicative of the strong potential of the bio-processing for allowing systems to detect smaller targets at longer distances in more cluttered environments.
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