有源毫米波图像中隐藏目标检测的低复杂度方法

IF 0.6 4区 物理与天体物理 Q4 OPTICS 红外与毫米波学报 Pub Date : 2019-01-01 DOI:10.11972/J.ISSN.1001-9014.2019.01.006
Chong-Jian Wang, Xiaowei Sun, Kehu Yang
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引用次数: 2

摘要

有源毫米波成像(AMWI)是一种有效的检测隐藏在衣服下的危险物体的方法。然而,由于AMWI获取的图像往往是模糊的,并且一些隐藏的目标尺寸很小,因此目标的自动检测和定位仍然是一个具有挑战性的问题。Yao首先使用卷积神经网络(cnn)并使用密集滑动窗口方法来检测隐藏目标。本文在Yao的基础上提出了两方面的改进:1)利用上下文信息抑制干扰,提高检测概率;2)采用两步搜索法代替穷举搜索,降低计算复杂度。为了降低计算复杂度,作者首先在垂直方向上使用一个CNN来过滤干扰并获得隐藏物体的垂直位置,然后使用另一个CNN来确定隐藏物体的水平位置。为了利用包含上下文信息的大窗口,在训练和测试过程中,作者使用IoG (intersection-over-ground truth)代替IoU (Intersection-over-Union)来定义正样本和负样本。实验结果表明,该方法在获得较好的检测性能的同时,将计算时间缩短到穷举搜索的30%左右。
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A low-complexity method for concealed object detection in active millimeter-wave images
Active millimeter wave imaging ( AMWI) is an efficient way to detect dangerous objects concealed under clothes. However,because the images acquired by AMWI are often obscure and some of concealed objects are small in size,the automatic detection and localization of the objects remain as a challenging problem. Yao first employed convolutional neural networks( CNNs) and used a dense sliding window method to detect concealed objects. In this paper,the author presents two improvements over Yao 's work: 1) Using contextual information to suppress interference and improve detection probability; 2) Using a two-step search method instead of exhaustive search to reduce the computational complexity. To reduce the computational complexity,the author first uses a CNN in vertical direction to filter the interference and obtain the vertical position of the concealed object,then uses another CNN to determine the horizontal position of the concealed object. To make use of big window containing contextual information,the author uses IoG ( intersection-over-ground-truth) instead of IoU ( Intersection-over-Union) to define positive and negative samples in training and testing process. Experimental results show that the proposed method will make the length of computational time reduced to about 30% of that of the exhaustive search while achieving better detection performance.
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来源期刊
CiteScore
1.20
自引率
14.30%
发文量
4258
审稿时长
2.9 months
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