首页> 外文期刊>Journal of X-ray science and technology >A novel material detection algorithm based on 2D GMM-based power density function and image detail addition scheme in dual energy X-ray images.
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A novel material detection algorithm based on 2D GMM-based power density function and image detail addition scheme in dual energy X-ray images.

机译:一种基于二维GMM的功率密度函数和双能量X射线图像图像细节相加方案的新型材料检测算法。

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摘要

Material detection is a vital need in dual energy X-ray luggage inspection systems at security of airport and strategic places. In this paper, a novel material detection algorithm based on statistical trainable models using 2-Dimensional power density function (PDF) of three material categories in dual energy X-ray images is proposed. In this algorithm, the PDF of each material category as a statistical model is estimated from transmission measurement values of low and high energy X-ray images by Gaussian Mixture Models (GMM). Material label of each pixel of object is determined based on dependency probability of its transmission measurement values in the low and high energy to PDF of three material categories (metallic, organic and mixed materials). The performance of material detection algorithm is improved by a maximum voting scheme in a neighborhood of image as a post-processing stage. Using two background removing and denoising stages, high and low energy X-ray images are enhanced as a pre-processing procedure. For improving the discrimination capability of the proposed material detection algorithm, the details of the low and high energy X-ray images are added to constructed color image which includes three colors (orange, blue and green) for representing the organic, metallic and mixed materials. The proposed algorithm is evaluated on real images that had been captured from a commercial dual energy X-ray luggage inspection system. The obtained results show that the proposed algorithm is effective and operative in detection of the metallic, organic and mixed materials with acceptable accuracy. [ABSTRACT FROM AUTHOR]
机译:在机场和战略场所的安全性中,在双能X射线行李检查系统中,材料检测至关重要。本文提出了一种基于统计可训练模型的材料检测新算法,该模型使用双能量X射线图像中三个材料类别的二维功率密度函数(PDF)。在该算法中,通过高斯混合模型(GMM)根据低能和高能X射线图像的透射测量值估算作为统计模型的每种材料类别的PDF。根据对象在低和高能量下的透射测量值对三种材料类别(金属,有机和混合材料)的PDF的依赖概率,确定对象每个像素的材料标签。作为后处理阶段,通过图像附近的最大投票方案提高了材料检测算法的性能。使用两个背景去除和去噪阶段,可以将高能和低能X射线图像增强为预处理过程。为了提高所提出的材料检测算法的辨别能力,将低能和高能X射线图像的细节添加到构造的彩色图像中,该彩色图像包括三种颜色(橙色,蓝色和绿色),用于表示有机,金属和混合材料。在从商用双能X射线行李检查系统捕获的真实图像上评估提出的算法。所得结果表明,该算法在金属,有机物和混合材料的检测中是有效的,并且具有可接受的精度。 [作者的摘要]

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