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A digital image analysis and neural network based system for identification of third-stage parasitic strongyle larvae from domestic animals.

机译:一种基于数字图像分析和神经网络的系统,可从家畜中识别出第三阶段寄生的扁线虫幼虫。

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摘要

A competitive learning vector quantization artificial neural network (ANN) was trained to identify third-stage parasitic strongyle larvae from domestic animals on the basis of quantitative data obtained from processed digital images of larvae. For this reason, various quantitative features obtained from processed digital images of larvae were tested as to whether they are variant or invariant to the shape taken by the motile larvae during image recording. A total of 255 images of 57 individual larvae in various shapes belonging to five genera were recorded. Following image processing, 16 features were measured, of which seven were selected as invariant to larva shape. By trial and error, two of those features, 'area' and 'perimeter', along with the quantitative features used in conventional identification, 'overall body length', 'width' and 'extension of sheath' (tip of larva to tip of sheath), were used as an effective training data set for the ANN. This ANN coupled with an image analysis facility and a knowledge relational database became the basis for developing a computer-based larva identification system whose overall identification performance was 91.9%. The advantages of this system are its speed and objectivity. The objectivity of the system is based on the fact that it is not subject to inter- and intra-observer variability arising from the user's profile of competency in interpreting subjective and non-quantifiable descriptions. The limitations of the system are that it cannot handle raw images but only data extracted from images, its performance depends on the reliability of the input vectors used as training data for the ANN, and its use is restricted only to well-equipped laboratories due to its requirement for expensive instrumentation.
机译:训练了一种竞争性学习矢量量化人工神经网络(ANN),可以根据从处理过的幼虫数字图像中获得的定量数据从家畜中识别出第三阶段的寄生圆虫幼虫。由于这个原因,测试了从幼虫的处理过的数字图像获得的各种定量特征,以确定它们在图像记录过程中是否与活动幼虫的形状不同或不变。共记录了255个图像,这些图像分别属于五个属的57种不同形状的幼虫。在图像处理之后,测量了16个特征,其中7个被选为幼虫形状的不变特征。通过反复试验,其中的两个特征“区域”和“周长”,以及常规识别中使用的定量特征,“全身长”,“宽度”和“鞘管的延伸”(幼虫的尖端到尖端的尖端)。护套)用作ANN的有效训练数据集。该人工神经网络加上图像分析工具和知识关系数据库,成为开发基于计算机的幼虫识别系统的基础,该系统的总体识别性能为91.9%。该系统的优势在于它的速度和客观性。系统的客观性是基于这样一个事实,即该系统不受观察者之间和观察者内部的可变性的影响,该可变性是由于用户在解释主观和不可量化的描述时的能力概况而引起的。该系统的局限性在于它不能处理原始图像,而只能处理从图像中提取的数据,其性能取决于用作ANN训练数据的输入向量的可靠性,并且由于以下原因其使用仅限于装备精良的实验室:它需要昂贵的仪器。

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