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Dim and small target detection based on feature mapping neural networks

机译:基于特征映射神经网络的弱小目标检测

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Dim and small target detection based on passive millimeter wave or infrared imaging is of great value in both security and military fields and has been studied extensively. The problems of weak distinction between small targets and backgrounds and of less extractable features of targets have always been a technical bottleneck for accurate detection of dim and small targets. For dim and small targets with few pixel-based features on complex and diverse backgrounds, we propose a high-precision detection algorithm based on feature mapping deep neural networks with a spindle network structure. Firstly, the features of low-dimension dim and small target blocks are mapped to a higher-dimensional space. An encoded neural network is then used to extract high-discriminant features to complete the background and target recognition. Background suppression and target enhancement is realized according to the intensity (the distinguished output of the network). Finally, a detection method based on the constant false alarm rate is used to detect dim and small targets. The experimental results show that, compared with several popular algorithms for millimeter-wave and infrared image detection in different scenarios, the proposed algorithm has a lower false alarm rate, higher detection accuracy and stronger robustness. Statistics for experiments on under various false alarm rates and signal-to-noise ratios show that the detection rate of the proposed method is about 15% higher than that of the compared algorithms. In experiments on real data, the detection rate of our algorithm is more than 25% higher than that of the suboptimal algorithm. (C) 2019 Elsevier Inc. All rights reserved.
机译:基于被动毫米波或红外成像的弱小目标检测在安全和军事领域均具有重要价值,并已得到广泛研究。小目标和背景之间的区别不明显,目标的可提取特征较弱的问题一直是精确检测暗淡和小目标的技术瓶颈。对于在复杂多样的背景下具有很少像素特征的弱小目标,我们提出了一种基于特征映射深度神经网络和主轴网络结构的高精度检测算法。首先,将低维暗点和小目标块的特征映射到高维空间。然后,使用编码的神经网络提取高分辨特征,以完成背景和目标识别。根据强度(网络的杰出输出)实现背景抑制和目标增强。最后,使用基于恒定误报率的检测方法来检测昏暗和小的目标。实验结果表明,与几种流行的毫米波和红外图像在不同场景下的检测算法相比,该算法具有较低的误报率,较高的检测精度和较强的鲁棒性。在各种误报率和信噪比下进行的实验统计数据表明,该方法的检测率比比较算法高15%。在真实数据实验中,我们的算法的检测率比次优算法高25%以上。 (C)2019 Elsevier Inc.保留所有权利。

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