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Target detection and recognition improvements by use of spatiotemporal fusion

机译:使用时空融合改进目标检测和识别

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We developed spatiotemporal fusion techniques for improving target detection and automatic target recognition. We also investigated real IR (infrared) sensor clutter noise. The sensor noise was collected by an IR (256×256) sensor looking at various scenes (trees, grass, roads, buildings, etc.). More than 95% of the sensor pixels showed near-stationary sensor clutter noise that was uncorrelated between pixels as well as across time frames. However, in a few pixels (covering the grass near the road) the sensor noise showed nonstationary properties (with increasing or decreasing mean across time frames). The natural noise extracted from the IR sensor, as well as the computer-generated noise with Gaussian and Rayleigh distributions, was used to test and compare different spatiotemporal fusion strategies. Finally, we proposed two advanced detection schemes: the double-thresholding the reverse-thresholding techniques. These techniques may be applied to complicated clutter situations (e.g., very-high clutter or nonstationary clutter situations) where the traditional constant-false-alarm-ratio technique may fail.
机译:我们开发了时空融合技术来改善目标检测和自动目标识别。我们还研究了真实的IR(红外)传感器杂波噪声。传感器噪声是通过IR(256×256)传感器收集的,这些传感器观察各种场景(树木,草地,道路,建筑物等)。超过95%的传感器像素显示了接近平稳的传感器杂波噪声,这些噪声在像素之间以及跨时间范围都是不相关的。但是,在几个像素(覆盖道路附近的草丛)中,传感器噪声显示出不稳定的特性(在整个时间范围内,平均数增加或减少)。从红外传感器提取的自然噪声以及计算机生成的具有高斯和瑞利分布的噪声被用于测试和比较不同的时空融合策略。最后,我们提出了两种先进的检测方案:双阈值反阈值技术。这些技术可以应用于传统的恒定-虚假-警报比率技术可能失败的复杂的混乱情况(例如,非常高的混乱或非平稳的混乱情况)。

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