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Deep Unsupervised Representation Learning for Abnormal Heart Sound Classification

机译:深度无监督表示学习,用于异常心音分类

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Given the world-wide prevalence of heart disease, the robust and automatic detection of abnormal heart sounds could have profound effects on patient care and outcomes. In this regard, a comparison of conventional and state-of-theart deep learning based computer audition paradigms for the audio classification task of normal, mild abnormalities, and moderate/severe abnormalities as present in phonocardiogram recordings, is presented herein. In particular, we explore the suitability of deep feature representations as learnt by sequence to sequence autoencoders based on the auDeep toolkit. Key results, gained on the new Heart Sounds Shenzhen corpus, indicate that a fused combination of deep unsupervised features is well suited to the three-way classification problem, achieving our highest unweighted average recall of 47.9% on the test partition.
机译:鉴于全世界范围内普遍存在心脏病,健壮和自动检测异常心音可能会对患者的护理和结果产生深远的影响。在这方面,本文呈现了常规的和最新的基于深度学习的计算机试听范例,用于心音图记录中存在的正常,轻度异常和中度/重度异常的音频分类任务。尤其是,我们探索了通过auDeep工具包通过序列学习到的深度特征表示对序列自动编码器的适用性。新的深圳心音语料库获得的关键结果表明,深度无监督功能的融合组合非常适合三向分类问题,在测试分区上实现了我们最高的未加权平均召回率,为47.9%。

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