微目标图像轮廓和亮度彩色图像识别的优化方法

I. Jumanov, O. Djumanov, R. Safarov
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引用次数: 1

摘要

基于提取微物体的纹理、特征和几何特征的机制,提出了一种优化花粉颗粒图像识别和处理的方法。根据基于大范围函数依赖关系的动态曲线的生长特征,提出了一种轮廓趋势描述技术。外推机制已经发展为指数,自回归,移动平均,自适应平滑,预测和连接图像轮廓参考点的统计模型。提出了遮挡参考点、像素表示、调整参考点宽度、修改双二次插值的原理,以及轮廓曲线动态变化的分割和检测机制。本文研究了用插值样条(Daubechies函数、4,8正交多项式)描述花粉粒特征曲线的机理。已经实现了一套程序,重点应用了一种机制,用于减少零点,调节起始点,中心,段边界,参考点的掩模宽度和彩色亮度图像。该综合体的程序模块是用c++创建的,并在«CUDA并行计算环境中进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Methodology of Optimization of Identification of the Contour and Brightness-Color Picture of Images of Micro-Objects
A methodology has been developed for optimizing the identification and processing of images of pollen grains based on the use of mechanisms for extracting texture, specific characteristics, and geometric features of micro-objects. A technique is proposed for the trend description of the contour according to the characteristics of the growth of a dynamic curve based on a wide range of functional dependencies. Extrapolation mechanisms have been developed for exponential, autoregressive, moving average, adaptive smoothing, statistical models of forecasting and linking of reference points of the image contour. The principles of masking reference points, pixel representation, adjusting their width, modifying biquadratic interpolation, as well as mechanisms for segmenting and detecting changes in the dynamics of the contour curve are proposed. The mechanisms for describing a contour curve by an interpolation spline - the Daubechies function, 4, 8 orthogonal polynomials in order to identify the characteristics of pollen grains - are investigated. A set of programs has been implemented that focuses on the application of a mechanism for reducing zero points, regulating the beginning, center, segment boundaries, mask width of the reference point, and color-brightness picture. The program modules of the complex are created in C++ and tested in the «CUDA parallel computing environment.
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