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Lung Sound Classification Using Snapshot Ensemble of Convolutional Neural Networks

机译:卷积神经网络快照集成的肺声分类

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We propose a robust and efficient lung sound classification system using a snapshot ensemble of convolutional neural networks (CNNs). A robust CNN architecture is used to extract high-level features from log mel spectrograms. The CNN architecture is trained on a cosine cycle learning rate schedule. Capturing the best model of each training cycle allows to obtain multiple models settled on various local optima from cycle to cycle at the cost of training a single mode. Therefore, the snapshot ensemble boosts performance of the proposed system while keeping the drawback of expensive training of ensembles moderate. To deal with the class-imbalance of the dataset, temporal stretching and vocal tract length perturbation (VTLP) for data augmentation and the focal loss objective are used. Empirically, our system outperforms state-of-the-art systems for the prediction task of four classes (normal, crackles, wheezes, and both crackles and wheezes) and two classes (normal and abnormal (i.e. crackles, wheezes, and both crackles and wheezes)) and achieves 78.4% and 83.7% ICBHI specific micro-averaged accuracy, respectively. The average accuracy is repeated on ten random splittings of 80% training and 20% testing data using the ICBHI 2017 dataset of respiratory cycles.
机译:我们提出了一种使用卷积神经网络(CNN)快照合奏的健壮和高效的肺部声音分类系统。强大的CNN架构用于从对数梅尔频谱图中提取高级特征。 CNN体系结构是按余弦周期学习率计划进行训练的。捕获每个训练周期的最佳模型允许以训练单个模式为代价,在每个周期之间获得基于各种局部最优确定的多个模型。因此,快照合奏在保持适度的昂贵训练合奏的缺点的同时,提高了所提出系统的性能。为了处理数据集的类别不平衡,使用了时间扩展和声道长度扰动(VTLP)来进行数据增强和聚焦损失目标。从经验上讲,我们的系统在四个类别(正常,crack啪声,喘息和crack啪作响的同时)和两个类别(正常和异常(crack啪声,喘息,以及crack啪作响和微风),并分别达到78.4%和83.7%的ICBHI特定微平均准确度。使用ICBHI 2017呼吸周期数据集,在80%训练和20%测试数据的十次随机分割中重复了平均准确性。

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