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Automated detection of cars in transmission X-ray images of freight containers

机译:在货运集装箱的X射线图像中自动检测汽车

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We present a method for automated car detection in xraytransmission images of freight containers. A random forest classifier was used to classify image sub-windows as “car” and “non-car” based on image features such as intensity and log-intensity, as well as local structures and symmetries as encoded by Basic Image Features (BIFs) and oriented Basic Image Features (oBIFs). The proposed approach was validated using a dataset of stream of commerce X-ray images. A car detection rate of 100% was achieved while maintaining a false alarm rate of 1.23%. Further reduction in false alarm rate, potentially at the cost of detection rate, was possible by tweaking the classification confidence threshold. This work establishes a framework for the automated classification of X-ray transmission cargo images and their content, paving the way towards the development of tools to assist custom officers faced with an ever increasing number of images to inspect.
机译:我们提出一种在货运集装箱的X射线透射图像中自动检测汽车的方法。基于强度和对数强度等图像特征,以及由基本图像特征(BIF)编码的局部结构和对称性,使用随机森林分类器将图像子窗口分为“汽车”和“非汽车”两类和面向的基本图像功能(oBIF)。使用商业X射线图像流的数据集对提出的方法进行了验证。实现了100%的汽车检测率,同时保持了1.23%的误报率。通过调整分类置信度阈值,有可能进一步降低误报率,可能会降低检测率。这项工作为X射线透射货物图像及其内容的自动分类建立了框架,为开发工具以帮助海关人员面对越来越多的图像进行检查铺平了道路。

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