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Deep CNN Sparse Coding for Real Time Inhaler Sounds Classification

机译:深度CNN稀疏编码用于实时吸入器声音分类

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摘要

Effective management of chronic constrictive pulmonary conditions lies in proper and timely administration of medication. As a series of studies indicates, medication adherence can effectively be monitored by successfully identifying actions performed by patients during inhaler usage. This study focuses on the recognition of inhaler audio events during usage of pressurized metered dose inhalers (pMDI). Aiming at real-time performance, we investigate deep sparse coding techniques including convolutional filter pruning, scalar pruning and vector quantization, for different convolutional neural network (CNN) architectures. The recognition performance has been assessed on three healthy subjects following both within and across subjects modeling strategies. The selected CNN architecture classified drug actuation, inhalation and exhalation events, with 100%, 92.6% and 97.9% accuracy, respectively, when assessed in a leave-one-subject-out cross-validation setting. Moreover, sparse coding of the same architecture with an increasing compression rate from 1 to 7 resulted in only a small decrease in classification accuracy (from 95.7% to 94.5%), obtained by random (subject-agnostic) cross-validation. A more thorough assessment on a larger dataset, including recordings of subjects with multiple respiratory disease manifestations, is still required in order to better evaluate the method’s generalization ability and robustness.
机译:慢性收缩性肺部疾病的有效管理在于正确及时地用药。正如一系列研究表明的那样,可以通过成功识别患者在吸入器使用过程中执行的动作来有效地监控药物依从性。这项研究的重点是在使用加压计量吸入器(pMDI)期间识别吸入器音频事件。针对实时性能,我们针对不同的卷积神经网络(CNN)体系结构研究了深度稀疏编码技术,包括卷积滤波器修剪,标量修剪和矢量量化。遵循对象内部和对象建模策略对三个健康对象的识别性能进行了评估。所选的CNN架构在“留一对象”交叉验证设置中进行评估时,分别将药物启动,吸入和呼出事件分类为100%,92.6%和97.9%的准确性。此外,将相同架构的稀疏编码(压缩率从1增加到7)只会导致通过随机(与主题无关)交叉验证而获得的分类准确性的小幅下降(从95.7%下降到94.5%)。为了更好地评估该方法的泛化能力和鲁棒性,仍然需要对更大的数据集进行更彻底的评估,包括记录具有多种呼吸系统疾病表现的受试者。

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