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Neural Image Analysis and Electron Microscopy to Detect and Describe Selected Quality Factors of Fruit and Vegetable Spray-Dried Powders—Case Study: Chokeberry Powder

机译:神经图像分析和电子显微镜检测并描述水果和蔬菜喷雾干燥粉的选定品质因数-案例研究:苦莓粉

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摘要

The study concentrates on researching possibilities of using computer image analysis and neural modeling in order to assess selected quality discriminants of spray-dried chokeberry powder. The aim of the paper is the quality identification of chokeberry powders on account of their highest dying power, the highest bioactivity, as well as technologically satisfying looseness of the powder. The article presents neural models with vision techniques backed up by devices such as digital cameras, as well as an electron microscope. The reduction in size of input variables with PCA has an influence on improving the processes of learning data sets, thus increasing the effectiveness of identifying chokeberry fruit powders included in digital pictures, which is shown in the results of the conducted research. The effectiveness of image recognition is presented by classifying abilities, as well as low Root Mean Square Error (RMSE), for which the best results are achieved with a typology of network type Multi-Layer Perceptron (MLP). The selected networks type MLP are characterized by the highest degree of classification at 0.99 and RMSE at 0.11 at most at the same time.
机译:这项研究集中在研究使用计算机图像分析和神经建模来评估喷雾干燥苦莓粉的选定质量判别力的可能性。本文的目的是基于苦莓粉的最高染色力,最高生物活性以及技术上令人满意的松散性来鉴定苦莓粉的质量。本文介绍了具有视觉技术的神经模型,这些视觉技术由诸如数码相机和电子显微镜等设备支持。使用PCA减少输入变量的大小对改善学习数据集的过程有影响,从而提高了识别数字图片中包含的苦莓果粉的有效性,这在进行的研究结果中得到了证明。图像识别的有效性通过分类能力以及低均方根误差(RMSE)来表示,对于这些问题,使用网络类型多层感知器(MLP)的类型可以实现最佳结果。所选网络类型的MLP的特征是最高分类级别最高为0.99,而RMSE最高同时为0.11。

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