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Crystal surface analysis using matrix textural features classified by a probabilistic neural network

机译:使用概率神经网络分类的矩阵纹理特征进行晶体表面分析

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Abstract: A system is under development in which surface quality of a growing bulk mercuric iodide crystal is monitored by video camera at regular intervals for early detection of growth irregularities. Mercuric iodide single crystals are employed in radiation detectors. A microcomputer system is used for image capture and processing. The digitized image is divided into multiple overlapping sub-images and features are extracted from each sub-image based on statistical measures of the gray tone distribution, according to the method of Haralick. Twenty parameters are derived from each sub-image and presented to a probabilistic neural network (PNN) for classification. This number of parameters was found to be optimal for the system. The PNN is a hierarchical, feed-forward network that can be rapidly reconfigured as additional training data become available. Training data is gathered by reviewing digital images of many crystals during their growth cycle and compiling two sets of images, those with and without irregularities. !6
机译:摘要:正在开发一种系统,其中通过摄像机定期监视生长中的块状碘化汞晶体的表面质量,以及早发现生长不规则。碘化汞单晶用于辐射探测器。微型计算机系统用于图像捕获和处理。根据Haralick的方法,基于灰度分布的统计度量,将数字化的图像分为多个重叠的子图像,并从每个子图像中提取特征。从每个子图像中获取二十个参数,并将其显示给概率神经网络(PNN)进行分类。发现该数量的参数对于系统是最佳的。 PNN是一个分层的前馈网络,随着其他培训数据的出现,可以快速重新配置它。通过查看许多晶体在其生长周期中的数字图像并编辑两组图像(有无不规则的图像)来收集训练数据。 !6

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