基于Mellin变换和并行计算的微目标识别优化

I. Jumanov, S. Kholmonov
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引用次数: 0

摘要

基于神经网络的非静止目标最优识别的科学和方法基础已经得到了发展。提出了用于数据的检测、隐藏关系的提取、有用属性和模式、数据库和知识库的形成的模型和算法。利用图像的统计、动态和特定特征、三层、五层神经网络的独特特征以及与典型识别和分类工具设置变量的组合模型的机制已经开发出来。已经开发了确定和调整神经元权重的计算方案,选择合适的激活函数,突触和神经元间连接的系数,合理的神经网络结构,网络层数和神经元层数,一组非线性依赖的“输入-输出”函数。数据预处理算法实现了信息特征选择、分割、目标图像轮廓提取、基于退火、禁止和随机搜索方法的搜索等功能。测试了Hopfield、Hamming、Hebb、Kohonen、双向联想记忆的神经网络。提出了基于melin变换函数计算工具、质心初始值计算工具和次优变量集生成工具的二维和三维图像重建方案。在CUDA并行计算环境下,用c++语言开发并实现了识别软件包。
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 Micro-object Identification Based on the Mellin Transform and the Use of Parallel Computing
Scientific and methodological foundations for the optimal identification of non-stationary objects based on the use of neural networks have been developed. Models and algorithms for detection, extraction of hidden relationships, useful properties and patterns in data, formation of a database and knowledge bases are proposed. Mechanisms have been developed for using the statistical, dynamic and specific characteristics of images, unique features of three, five-layer neural networks and combined models for setting variables with typical recognition and classification tools. Have been developed computational schemes for determining and adjusting the weights of neurons, choosing a suitable activation function, coefficients of synaptic and interneuronal connections, rational neural network architecture, the number of layers and neurons in the layers of the network, a set of functions of nonlinear dependencies "inputs - outputs". Data pre-processing algorithms are implemented that perform the functions of informative features selection, segmentation, object image contour extraction, search based on methods with annealing, prohibition, and stochastic search. Tested neural networks of Hopfield, Hamming, Hebb, Kohonen, bidirectional associative memory were tested. Schemes for two and three-dimensional image reconstruction based on the synthesis of tools for calculating Mellin transform functions, initial values of centroids, and the formation of a suboptimal set of variables are proposed. The identification software package in C++ was developed and implemented in the CUDA parallel computing environment.
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