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Foreign object detection in chest X-rays

机译:胸部X光检查中的异物检测

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摘要

Automatic analysis of chest X-ray images is one important approach for screening/identifying pulmonary diseases. The existence of foreign objects in the images hinders the performance of such processing. In this paper, we focus on one type of foreign objects that is often shown in the images of a large dataset of chest X-rays we are working on-the buttons on the gown that the patient is wearing. The method we propose involves four major steps: intensity normalization, low contrast image identification and enhancement, segmentation of lung regions, and button object extraction. Based on the characteristics of the button objects, we applied two methods for the step of button object extraction. One was based on the circular Hough transform; the other was based on the Viola-Jones algorithm. We tested and compared both methods using a ground truth dataset containing 505 button objects. The results demonstrate the effectiveness of the proposed method.
机译:自动分析胸部X射线图像是筛查/识别肺部疾病的一种重要方法。图像中异物的存在阻碍了这种处理的性能。在本文中,我们关注的是一种异物,这种异物经常出现在我们正在处理的大量胸部X射线数据集的图像中,即患者所穿的礼服上的按钮。我们提出的方法涉及四个主要步骤:强度归一化,低对比度图像识别和增强,肺区域分割和纽扣对象提取。根据按钮对象的特征,我们为按钮对象提取步骤应用了两种方法。一种基于循环霍夫变换;另一种基于循环霍夫变换。另一种是基于Viola-Jones算法。我们使用包含505个按钮对象的地面真实数据集测试并比较了这两种方法。结果证明了该方法的有效性。

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