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A Pipelined Recurrent Fuzzy Model For Real-time Analysis Of Lung Sounds

机译:用于肺音实时分析的流水线递归模糊模型

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摘要

This paper presents a recurrent fuzzy-neural filter that performs the task of separation of lung sounds, obtained from patients with pulmonary pathology. The filter is a pipelined Takagi-Sugeno-Kang recurrent fuzzy network, consisting of a number of modules interconnected in a cascaded form. The participating modules are implemented through recurrent fuzzy neural networks with internal dynamics. The structure of the modules is evolved sequentially from input-output data. Extensive experimental results, regarding the lung sound category of crackles, are given, and a performance comparison with a series of other fuzzy and neural filters is conducted, underlining the separation capabilities of the proposed filter.
机译:本文介绍了一种递归的模糊神经过滤器,该过滤器执行从肺部病理学患者获得的分离肺音的任务。该过滤器是流水线式的Takagi-Sugeno-Kang递归模糊网络,它由多个以级联形式互连的模块组成。参与模块通过具有内部动力学的递归模糊神经网络实现。模块的结构是从输入-输出数据顺序地演变而来的。给出了关于裂纹的肺部声音类别的大量实验结果,并与一系列其他模糊和神经过滤器进行了性能比较,强调了所提出过滤器的分离能力。

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