Yeom Seokwon, Lee Dong-Su, Son Jung-Young, Jung Min-Kyoo, Jang YuShin, Jung Sang-Won, Lee Seok-Jae
Division of Computer and Communication Engineering, Daegu University, Gyeongsan, Gyeongbuk 712-714, Korea 2SamsungThales, Yongin 449-885, Korea.
Opt Express. 2011 Jan 31;19(3):2530-6. doi: 10.1364/OE.19.002530.
Millimeter wave imaging is finding rapid adoption in security applications such as the detection of objects concealed under clothing. A passive imaging system can be realized as a stand-off type sensor that can operate in open spaces, both indoors and outdoors. In this paper, we address real-time outdoor concealed-object detection and segmentation with a radiometric imaging system operating in the W-band. The imaging system is equipped with a dielectric lens and a receiver array operating at around 94 GHz. Images are analyzed by multilevel segmentation to identify a concealed object. Each level of segmentation comprises vector quantization, expectation-maximization, and Bayesian decision making to cluster pixels on the basis of a Gaussian mixture model. In addition, we describe a faster process that adopts only vector quantization for the first level segmentation. Experiments confirm that the proposed methods provide fast and reliable detection and segmentation for a moving human subject carrying a concealed gun.
毫米波成像在安全应用领域正迅速得到应用,比如用于检测藏于衣物下的物品。无源成像系统可实现为一种可在室内和室外开阔空间运行的远距离传感器。在本文中,我们利用一个工作在W波段的辐射成像系统来解决实时户外隐藏物体检测与分割问题。该成像系统配备了一个介质透镜和一个工作在约94GHz的接收器阵列。通过多级分割对图像进行分析以识别隐藏物体。分割的每个级别都包括矢量量化、期望最大化和贝叶斯决策,以便基于高斯混合模型对像素进行聚类。此外,我们描述了一种更快的方法,该方法在第一级分割中仅采用矢量量化。实验证实,所提出的方法能为携带隐藏枪支的移动人体目标提供快速且可靠的检测与分割。