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首页> 外文期刊>Latin America Transactions, IEEE (Revista IEEE America Latina) >New Approach To Automatic Detection Of Strange Objects In Body Scan Images
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New Approach To Automatic Detection Of Strange Objects In Body Scan Images

机译:自动检测人体扫描图像中奇怪物体的新方法

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摘要

In this article we present a new approach to automatic detection of strange objects in body scan images specifically in the region of the arms. This methodology is based on a combination of textures, a classifier (K-means or MLP) and a post-processing step. The tests were performed on 23 body scan images of volunteers. The accuracy of this approach is verified by the similarity and sensitivity coefficient with the count of identified and unidentified strange objects. The results indicate that the classifier K-means obtained 92.3% and 78.7% for the similarity and sensitivity coefficient, respectively, while the MLP neural network obtained 100% and 61.9% for the same coefficients. Given these results, it confirms the effectiveness of the methodology and discusses the use of MLP classifier for applications with strict visual inspection stage and the use of K-means classifier in applications where the incidence of false positives hinders the inspection result.
机译:在本文中,我们提出了一种自动检测人体扫描图像中特别是手臂区域中的奇怪物体的新方法。该方法基于纹理,分类器(K均值或MLP)和后处理步骤的组合。对志愿者的23幅身体扫描图像进行了测试。该方法的准确性通过与已识别和未识别的奇怪物体的数量的相似性和灵敏度系数进行验证。结果表明,分类器K均值的相似度和敏感性系数分别为92.3%和78.7%,而MLP神经网络的相同系数和敏感性系数分别为100%和61.9%。鉴于这些结果,它证实了该方法的有效性,并讨论了在具有严格视觉检查阶段的应用中使用MLP分类器,以及在假阳性发生率阻碍检查结果的应用中使用K-means分类器。

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