Two-Stream Boosted TCRNet for Range-Tolerant Infra-Red Target Detection

Shah Hassan, Abhijit Mahalanobis
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引用次数: 2

Abstract

The detection of vehicular targets in infra-red imagery is a challenging task, both due to the relatively few pixels on target and the false alarms produced by the surrounding terrain clutter. It has been previously shown [1] that a relatively simple network (known as TCRNet) can outperform conventional deep CNNs for such applications by maximizing a target to clutter ratio (TCR) metric. In this paper, we introduce a new form of the network (referred to as TCRNet-2) that further improves the performance by first processing target and clutter information in two parallel channels and then combining them to optimize the TCR metric. We also show that the overall performance can be considerably improved by boosting the performance of a primary TCRNet-2 detector, with a secondary network that enhances discrimination between targets and clutter in the false alarm space of the primary network. We analyze the performance of the proposed networks using a publicly available data set of infra-red images of targets in natural terrain. It is shown that the TCRNet-2 and its boosted version yield considerably better performance than the original TCRNet over a wide range of distances, in both day and night conditions.
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用于距离容忍红外目标检测的双流增强TCRNet
红外图像中车辆目标的检测是一项具有挑战性的任务,因为目标上的像素相对较少,而且周围的地形杂波会产生假警报。先前的研究表明,一个相对简单的网络(称为TCRNet)可以通过最大化目标杂波比(TCR)指标,在此类应用中优于传统的深度cnn。在本文中,我们引入了一种新的网络形式(称为TCRNet-2),该网络首先在两个并行信道中处理目标和杂波信息,然后将它们组合在一起以优化TCR度量,从而进一步提高了性能。我们还表明,通过提高主TCRNet-2探测器的性能,可以大大提高整体性能,而辅助网络可以增强主网络虚警空间中目标和杂波之间的区分。我们使用公开可用的自然地形目标红外图像数据集来分析所提出网络的性能。在白天和夜间条件下,TCRNet-2及其增强版本在大范围距离上比原始TCRNet产生更好的性能。
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