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Authentication of bee pollen grains in bright-field microscopy by combining one-class classification techniques and image processing

机译:结合一类分类技术和图像处理技术,在明视野显微镜下鉴定蜂花粉粒

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摘要

A novel method for authenticating pollen grains in bright-field microscopic images is presented in this work. The usage of this new method is clear in many application fields such as bee-keeping sector, where laboratory experts need to identify fraudulent bee pollen samples against local known pollen types. Our system is based on image processing and one-class classification to reject unknown pollen grain objects. The latter classification technique allows us to tackle the major difficulty of the problem, the existence of many possible fraudulent pollen types, and the impossibility of modeling all of them. Different one-class classification paradigms are compared to study the most suitable technique for solving the problem. In addition, feature selection algorithms are applied to reduce the complexity and increase the accuracy of the models. For each local pollen type, a one-class classifier is trained and aggregated into a multiclassifier model. This multiclassification scheme combines the output of all the one-class classifiers in a unique final response. The proposed method is validated by authenticating pollen grains belonging to different Spanish bee pollen types. The overall accuracy of the system on classifying fraudulent microscopic pollen grain objects is 92.3%. The system is able to rapidly reject pollen grains, which belong to nonlocal pollen types, reducing the laboratory work and effort. The number of possible applications of this authentication method in the microscopy research field is unlimited.
机译:在这项工作中提出了一种在明场显微图像中鉴定花粉粒的新方法。这种新方法的使用在养蜂业等许多应用领域中很明显,在这些领域中,实验室专家需要根据当地已知的花粉类型来识别欺诈性的蜂花粉样品。我们的系统基于图像处理和一类分类来拒绝未知的花粉粒对象。后一种分类技术使我们能够解决该问题的主要困难,存在许多可能的欺诈性花粉类型以及不可能对所有这些花粉类型进行建模。比较了不同的一类分类范例,以研究最适合解决问题的技术。另外,应用特征选择算法以降低复杂度并提高模型的准确性。对于每种本地花粉类型,将训练一类分类器并将其汇总到多分类器模型中。这种多分类方案将所有一类分类器的输出组合在一个唯一的最终响应中。通过鉴定属于不同西班牙蜂花粉类型的花粉粒来验证所提出的方法。该系统对欺诈性微观花粉粒对象进行分类的总体准确性为92.3%。该系统能够迅速剔除属于非本地花粉类型的花粉粒,从而减少了实验室的工作量和工作量。这种验证方法在显微镜研究领域的可能应用数量是无限的。

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