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ECG Image Classification in Real time based on the Haar-like Features and Artificial Neural Networks

机译:基于Haar样特征和人工神经网络的实时ECG图像分类

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The paper presents a ECGs classification system that uses powerful algorithms image processing and artificial intelligence. The descriptor haar-like is based on the concept of the integral image to accelerate the calculation of haar features and the classifier multilayer perceptron type. The training and testing of the proposed system were performed on two basic types: a learning base containing labeled data (normal ECG and ECG sick) and another base unlabeled data. The experimental results have shown that the system combines between the respective advantages of haar-like descriptor and artificial neuron networks in terms of robustness and speed.
机译:本文提出了一种使用强大算法的图像处理和人工智能的ECG分类系统。描述符类似Haar的概念是基于积分图像的概念,以加快haar特征和分类器多层感知器类型的计算。拟议系统的培训和测试是基于两种基本类型进行的:一个包含标记数据的学习库(正常的ECG和ECG患病患者)和另一个未标记数据的库。实验结果表明,该系统在鲁棒性和速度方面结合了类似haar的描述符和人工神经元网络的优点。

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