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Accuracy Improvement of Neural Networks Through Self-Organizing-Maps over Training Datasets

机译:通过自我组织地图在训练数据集中映射的神经网络的准确性改进

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摘要

Although it is not a novel topic, pattern recognition has become very popular and relevant in the last years. Different classification systems like neural networks, support vector machines or even complex statistical methods have been used for this purpose. Several works have used these systems to classify animal behavior, mainly in an offline way. Their main problem is usually the data pre-processing step, because the better input data are, the higher may be the accuracy of the classification system. In previous papers by the authors an embedded implementation of a neural network was deployed on a portable device that was placed on animals. This approach allows the classification to be done online and in real time. This is one of the aims of the research project MINERVA, which is focused on monitoring wildlife in Donana National Park using low power devices. Many difficulties were faced when pre-processing methods quality needed to be evaluated. In this work, a novel pre-processing evaluation system based on self-organizing maps (SOM) to measure the quality of the neural network training dataset is presented. The paper is focused on a three different horse gaits classification study. Preliminary results show that a better SOM output map matches with the embedded ANN classification hit improvement.
机译:虽然它不是一个新颖的话题,但在过去几年中,模式识别变得非常受欢迎和相关。不同的分类系统,如神经网络,支持向量机或甚至复杂的统计方法已经用于此目的。几种工程已经使用这些系统来分类动物行为,主要以离线方式。它们的主要问题通常是数据预处理步骤,因为更好的输入数据是,越高,分类系统的准确性就越高。作者在先前的论文中,在放置在动物上的便携式设备上部署了神经网络的嵌入式实现。这种方法允许在线和实时进行分类。这是研究项目Minerva的目标之一,它专注于使用低功耗设备监测Donana国家公园的野生动物。当预处理方法需要评估时,遇到许多困难。在这项工作中,提出了一种基于自组织地图(SOM)的新型预处理评估系统来测量神经网络训练数据集的质量。本文专注于三匹不同的马GA足部分类研究。初步结果表明,具有更好的SOM输出映射与嵌入的ANN分类命中改进。

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