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Microscopic Sample Segmentation by Fully Convolutional Network for Parasite Detection

机译:基于全卷积网络的显微样本分割用于寄生虫检测

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This paper describes a method of pixel-level segmentation applied to parasite detection. Parasite diseases in most cases are detected by microscopic samples examination or by ELISA blood tests. The microscopic methods are less invasive and often used in veterinary, but they need more time to prepare and visually evaluate samples. Diagnosticians search the entire sample to find parasite eggs and to classify their species. Depending on the species of the diagnosed animal, the samples can contain various types of pollution, e.g. fragments of plants. Most of the objects in the sample by their transparency look similar, and some of parasites eggs might be unintentionally omitted. The presented method based on fully convolutional network allows processing the entire space of the sample and assigning a class to each pixel of the image. Our model was trained to classify parasite eggs and distinguish them from adjacent or overlapped pollution.
机译:本文介绍了一种应用于寄生虫检测的像素级分割方法。在大多数情况下,寄生虫病是通过显微镜检查或ELISA血液检测来检测的。显微方法侵入性较小,通常在兽医中使用,但是它们需要更多的时间来准备和目测评估样品。诊断人员会搜索整个样本,以找到寄生虫卵并对它们的种类进行分类。根据被诊断动物的种类,样品可能包含各种类型的污染,例如污染。植物的碎片。样品中的大多数对象的透明度看上去都相似,并且可能会无意中忽略了一些寄生虫卵。所提出的基于全卷积网络的方法允许处理样本的整个空间,并为图像的每个像素分配一个类。我们的模型经过训练,可以对寄生虫卵进行分类,并将其与相邻或重叠的污染区分开。

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