基于图像形态特征的微目标识别优化

I. Jumanov, R. Safarov
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引用次数: 0

摘要

基于神经网络和提取图像形态特征的机制,开发了识别、识别和分类微物体的建设性方法、原则和方法。提出了一种基于从照片、摄像机、数码显微镜中获取微物体图像的信息处理技术。开发了一种用于微型物体尺寸的交互式测量、计数、确定结构、进行统计分析、分离和分割碎片、选择信息点、识别和分类图像的技术。建立了图像初步处理的计算方案,包括纹理、轮廓分割、检测和变量调节机制。考虑到图像点的非平稳性,建立了在允许范围内设置变量的神经网络学习算法。研究了学习算法与神经网络动态模型相结合的有效性,以及调节网络层之间神经元的线性、非线性和组合连接的机制。研究以正确率为标准进行。开发并实现了一个用于花粉粒图像可视化、识别和分类的软件包,并在先验不足、不确定性和非平稳性条件下进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of recognition of micro-objects based on the use of morphometric characteristics of images
Constructive approaches, principles and methods of identification, recognition and classification of micro-objects based on the use of neural networks and mechanisms for extracting morphometric characteristics of images have been developed. Information processing technology based on obtaining images of micro-objects from a photo, video camera, digital microscope is proposed. A technique has been developed for interactive measurement of the size of micro-objects, counting, determining the structure, conducting statistical analysis, isolating and segmenting fragments, selecting informative points, recognizing and classifying images. A computational scheme for preliminary processing of images is built, including mechanisms for texture, contour segmentation, detection, and regulation of variables. Algorithms for learning neural networks with setting variables within the limits of permissible values, taking into account the properties of nonstationarity of image points, have been built. The effectiveness of learning algorithms combined with neural network dynamic models with mechanisms for regulating linear, nonlinear, compositional connections of neurons between network layers has been investigated. The study was carried out according to the criterion of the percentage of correct recognition. A software package for visualization, recognition, classification of images of pollen grains has been developed and implemented, which has been tested under conditions of a priori insufficiency, uncertainty and nonstationarity.
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