FA-UNet: Semantic Segmentation of Passive Millimeter–Wave Images for Concealed Object Detection

IF 0.9 4区 工程技术 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS International Journal of RF and Microwave Computer-Aided Engineering Pub Date : 2024-11-16 DOI:10.1155/2024/8628149
Huakun Zhang, Lin Guo, Deyue An,  Odbal
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Abstract

Passive millimeter–wave (PMMW) scanners are widely used for personal security screening in public places due to their nonradiation and high real-time capabilities. However, the images obtained by these scanners frequently exhibit low signal-to-noise ratios and contrast, presenting challenges for automated detection systems. To address this issue, we propose an efficient semantic segmentation approach, FA-UNet, that employs a UNet architecture with a fusion attention mechanism to conduct binary classification (human body vs. background, including objects) for PMMW images. This approach incorporates a spatial attention mechanism into the lateral connections between the encoder and decoder and introduces a channel attention mechanism during the feature fusion process in the decoder. By combining these attention mechanisms, FA-UNet leads to more precise segmentation outcomes. The segmented image is then fused with the original image using our multistage fusion method, in which, first, the two images are blended in a 1:1 ratio for object detection. Then, a new fused image is obtained by adjusting the ratio within a certain range (0.3–0.5). Finally, the object detection results are overlaid on this fused image to generate a directly displayable image. We evaluate our method using a self-made dataset. Experimental results demonstrate that FA-UNet can accurately segment the human body region and preserve object shapes effectively. Using the fused image for object detection helps reduce false detections caused by background noise interference while improving the detection rate of weak targets. Additionally, the fused image aids in manual image interpretation in locations with higher security inspection levels and contributes to protect the privacy of individuals undergoing inspection to the greatest extent possible.

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FA-UNet:用于隐蔽物体检测的被动毫米波图像的语义分割
无源毫米波(PMW)扫描仪因其无辐射和高实时性而被广泛用于公共场所的个人安检。然而,这些扫描仪获得的图像通常信噪比和对比度较低,给自动检测系统带来了挑战。为解决这一问题,我们提出了一种高效的语义分割方法 FA-UNet,该方法采用 UNet 架构和融合注意力机制,对 PMMW 图像进行二元分类(人体与背景,包括物体)。这种方法在编码器和解码器之间的横向联系中加入了空间注意机制,并在解码器的特征融合过程中引入了通道注意机制。通过结合这些注意机制,FA-UNet 可以获得更精确的分割结果。然后,利用我们的多级融合方法将分割后的图像与原始图像融合。然后,在一定范围(0.3-0.5)内调整比例,得到新的融合图像。最后,将物体检测结果叠加到该融合图像上,生成可直接显示的图像。我们使用自制的数据集对我们的方法进行了评估。实验结果表明,FA-UNet 可以准确分割人体区域,并有效保留物体形状。使用融合图像进行物体检测有助于减少背景噪声干扰造成的误检测,同时提高弱目标的检测率。此外,在安全检查级别较高的场所,融合图像还有助于人工图像判读,并在最大程度上保护接受检查人员的隐私。
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来源期刊
CiteScore
4.00
自引率
23.50%
发文量
489
审稿时长
3 months
期刊介绍: International Journal of RF and Microwave Computer-Aided Engineering provides a common forum for the dissemination of research and development results in the areas of computer-aided design and engineering of RF, microwave, and millimeter-wave components, circuits, subsystems, and antennas. The journal is intended to be a single source of valuable information for all engineers and technicians, RF/microwave/mm-wave CAD tool vendors, researchers in industry, government and academia, professors and students, and systems engineers involved in RF/microwave/mm-wave technology. Multidisciplinary in scope, the journal publishes peer-reviewed articles and short papers on topics that include, but are not limited to. . . -Computer-Aided Modeling -Computer-Aided Analysis -Computer-Aided Optimization -Software and Manufacturing Techniques -Computer-Aided Measurements -Measurements Interfaced with CAD Systems In addition, the scope of the journal includes features such as software reviews, RF/microwave/mm-wave CAD related news, including brief reviews of CAD papers published elsewhere and a "Letters to the Editor" section.
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