首页> 外文期刊>The Analyst: The Analytical Journal of the Royal Society of Chemistry: A Monthly International Publication Dealing with All Branches of Analytical Chemistry >Learning-based automatic sensing and size classification of microparticles using smartphone holographic microscopy
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Learning-based automatic sensing and size classification of microparticles using smartphone holographic microscopy

机译:使用智能手机全息显微镜微粒的基于学习的自动传感和尺寸分类

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The accurate and fast size classification of microparticles is important in environmental monitoring and biomedical applications. Conventional methods for sensing and classifying microparticles require bulky optical setups and generally show medium performance. Accordingly, the development of a portable and smart platform for accurate particle size classification is essential. In this study, we propose a new sensing platform for automatic identification of microparticle types through the synergistic integration of smartphone-based digital in-line holographic microscopy (DIHM) and machine-learning algorithms. The smartphone-based DIHM system consists of a coherent laser beam, a pinhole, a sample holder, a three-dimensional printed attachment, and a modified built-in smartphone camera module. The portable device has a physical dimension of 4 x 8 x 10 cm(3) and 220 g in weight. Holograms of various polystyrene microparticles with different sizes (d = 2-50 m) were recorded with a wide field-of-view and high spatial resolution. To establish a proper classification model, tens of features including geometrical parameters and light-intensity distributions were extracted from holograms of individual particles, and five machine-learning algorithms were used. After examining the performance of several classifiers, the resulting support vector machine model trained by using three geometrical parameters and three extracted parameters from light-intensity distributions shows the highest accuracy in the particle classification of the training and test sets (>98%). Therefore, the developed handheld smartphone-based platform can be potentially utilized to cope with various imaging needs in mobile healthcare and environmental monitoring.
机译:微粒的准确和快速尺寸分类在环境监测和生物医学应用中是重要的。用于感测和分类微粒的常规方法需要庞大的光学设置,并且通常显示介质性能。因此,用于精确粒度分类的便携式和智能平台是必不可少的。在这项研究中,我们提出了一种新的传感平台,通过智能手机的数字在线全息显微镜(DIHM)和机器学习算法协同集成来自动识别微粒类型。基于智能手机的DIHM系统由相干激光束,针孔,样品架,三维印刷附件和改进的内置智能手机模块组成。便携式设备的物理尺寸为4×8×10cm(3)和220g重量。以宽的视野和高空间分辨率记录具有不同尺寸(d =2-50μm)的各种聚苯乙烯微粒的全息图。为了建立适当的分类模型,从各个粒子的全息图提取了几十个特征,包括几何参数和光强分布,并使用了五种机器学习算法。在检查多个分类器的性能之后,通过使用三个几何参数和来自光强度分布的三个提取的参数训练的得到的支持向量机模型显示了训练和测试集的粒子分类中的最高精度(> 98%)。因此,可以将开发的手持式智能手机的平台潜在地用于应对移动医疗保健和环境监测中的各种成像需求。

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