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Evaluation of Yogurt Microstructure Using Confocal Laser Scanning Microscopy and Image Analysis

机译:用共聚焦激光扫描显微镜和图像分析评价酸奶微观结构

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摘要

The microstructure of protein networks in yogurts defines important physical properties of the yogurt and hereby partly its quality. Imaging this protein network using confocal scanning laser microscopy (CSLM) has shown good results, and CSLM has become a standard measuring technique for fermented dairy products. When studying such networks, hundreds of images can be obtained, and here image analysis methods are essential for using the images in statistical analysis. Previously, methods including gray level co-occurrence matrix analysis and fractal analysis have been used with success. However, a range of other image texture characterization methods exists. These methods describe an image by a frequency distribution of predefined image features (denoted textons). Our contribution is an investigation of the choice of image analysis methods by performing a comparative study of 7 major approaches to image texture description. Here, CSLM images from a yogurt fermentation study are investigated, where production factors including fat content, protein content, heat treatment, and incubation temperature are varied. The descriptors are evaluated through nearest neighbor classification, variance analysis, and cluster analysis. Our investigation suggests that the texton-based descriptors provide a fuller description of the images compared to gray-level co-occurrence matrix descriptors and fractal analysis, while still being as applicable and in some cases as easy to tune. Practical Application Confocal laser scanning microscopy images can be used to provide information on the protein microstructure in yogurt products. For large numbers of microscopy images, subjective evaluation becomes a difficult or even impossible approach, if the images should be incorporated in any form of statistical analysis alongside other measuring modalities or sensory data. Instead, automated image texture analysis can be used to provide objective descriptions of the images, and we provide a comparative study for a broad range of the many image texture analysis available. All of the investigated techniques should be applicable for any type of pseudo homogeneous image structures.
机译:酸奶中蛋白质网络的微观结构定义了酸奶的重要物理性能,从而部分决定了其质量。使用共聚焦扫描激光显微镜(CSLM)对蛋白质网络进行成像已显示出良好的结果,CSLM已成为发酵乳制品的标准测量技术。在研究这样的网络时,可以获得数百张图像,并且这里的图像分析方法对于在统计分析中使用图像至关重要。以前,已成功使用包括灰度共现矩阵分析和分形分析在内的方法。然而,存在一系列其他图像纹理表征方法。这些方法通过预定义图像特征(表示为文本)的频率分布来描述图像。我们的贡献是通过对7种主要的图像纹理描述方法进行比较研究来研究图像分析方法的选择。在这里,对酸奶发酵研究中的CSLM图像进行了研究,改变了包括脂肪含量,蛋白质含量,热处理和孵育温度在内的生产因子。通过最近邻居分类,方差分析和聚类分析来评估描述符。我们的研究表明,与灰度共生矩阵描述符和分形分析相比,基于texton的描述符提供了更完整的图像描述,同时仍然适用且在某些情况下易于调整。实际应用共聚焦激光扫描显微镜图像可用于提供有关酸奶产品中蛋白质微观结构的信息。对于大量的显微镜图像,如果应将图像与其他测量方式或感官数据一起以任何形式的统计分析形式并入,则主观评估将变得困难甚至不可能。取而代之的是,可以使用自动图像纹理分析来提供图像的客观描述,并且我们对许多可用的许多图像纹理分析进行了比较研究。所有研究的技术应适用于任何类型的伪均质图像结构。

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