首页> 外文会议>International Work-Conference on Artificial Neural Networks(IWANN 2007); 20070620-22; San Sebastian(ES) >Auto Adjustable ANN-Based Classification System for Optimal High Dimensional Data Analysis
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Auto Adjustable ANN-Based Classification System for Optimal High Dimensional Data Analysis

机译:基于自适应神经网络的自动分类系统,可进行最佳的高维数据分析

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摘要

ANN-based supervised classification systems are very popular when dealing with high dimensional datasets, like multi or hyperspectral images. Typical approaches require a highly time-consuming preprocessing stage where the dimensionality is reduced through the deletion or averaging of redundant information and the establishment of a processing "window" that is displaced over the dataset. Only after this stage, the ANN-based system can perform the classification process the success of which, as a consequence, depends on the quality of the preprocessed data. In this paper, we propose a classification system that automatically obtains the optimal window size and dimensional transformation parameters for a given set of categorization requirements while it is performing the training of the ANN. In addition, the parameters of the ANN in terms of number of inputs are also adapted on line. To test the system, it was applied to a hyperspectral image classification process of real materials where the pixel resolution implies that a material is characterized by spectral patterns of combinations of pixels.
机译:当处理高维数据集(例如多光谱或高光谱图像)时,基于ANN的监督分类系统非常受欢迎。典型的方法需要非常耗时的预处理阶段,在该阶段中,通过删除或平均冗余信息以及建立在数据集上移动的处理“窗口”来降低维数。仅在此阶段之后,基于ANN的系统才可以执行分类过程,其结果因此取决于预处理数据的质量。在本文中,我们提出了一种分类系统,该系统在执行ANN的训练时会针对给定的一组分类要求自动获得最佳的窗口大小和尺寸转换参数。此外,ANN的输入数量参数也可以在线调整。为了测试该系统,将其应用于实际材料的高光谱图像分类过程,其中像素分辨率表示材料由像素组合的光谱模式表征。

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