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Automatic Particle Detection and Counting by One-Class SVM from Microscope Image

机译:一类SVM从显微镜图像自动检测和计数粒子

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Asbestos-related illnesses become a nationwide problem in Japan. Now human inspectors check whether asbestos is contained in building material or not. To judge whether the specimen contains asbestos or not, 3,000 particles must be counted from microscope images. This is a major labor-intensive bottleneck. In this paper, we propose an automatic particle counting method for automatic judgement system whether the specimen is hazardous or not. However, the size, shape and color of particles are not constant. Therefore, it is difficult to model the particle class. On the other hand, the non-particle class is not varied much. In addition, the area of non-particles is wider than that of particles. Thus, we use One-Class Support Vector Machine (OCSVM). OCSVM identifies "outlier" from input samples. Namely, we model the non-particle class to detect the particle class as outlier. In experiments, the proposed method gives higher accuracy and smaller number of false positives than a preliminary method of our project.
机译:在日本,与石棉有关的疾病成为全国性的问题。现在,人类检查人员将检查建筑材料中是否包含石棉。为了判断样品中是否含有石棉,必须从显微镜图像中计数出3,000个颗粒。这是一个主要的劳动密集型瓶颈。本文提出了一种自动判断样品是否危险的自动计数系统的粒子计数方法。但是,颗粒的大小,形状和颜色不是恒定的。因此,很难对粒子类别进行建模。另一方面,非粒子类别变化不大。另外,非颗粒的面积大于颗粒的面积。因此,我们使用一类支持向量机(OCSVM)。 OCSVM从输入样本中识别“异常值”。即,我们对非粒子类进行建模以将粒子类检测为离群值。在实验中,与我们的项目的初步方法相比,所提出的方法具有更高的准确性和更少的误报率。

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