This thesis focuses on dealing with the task of acoustic scene classification (ASC), and then applied the techniques developed for ASC to a real-life application of detecting respiratory disease. To deal with ASC challenges, this thesis addresses three main factors that directly affect the performance of an ASC system. Firstly, this thesis explores input features by making use of multiple spectrograms (log-mel, Gamma, and CQT) for low-level feature extraction to tackle the issue of insufficiently discriminative or descriptive input features. Next, a novel Encoder network architecture is introduced. The Encoder firstly transforms each low-level spectrogram into high-level intermediate features, or embeddings, and thus combines these high-level features to form a very distinct composite feature. The composite or combined feature is then explored in terms of classification performance, with different Decoders such as Random Forest (RF), Multilayer Perception (MLP), and Mixture of Experts (MoE). By using this Encoder-Decoder framework, it helps to reduce the computation cost of the reference process in ASC systems which make use of multiple spectrogram inputs. Since the proposed techniques applied for general ASC tasks were shown to be highly effective, this inspired an application to a specific real-life application. This was namely the 2017 Internal Conference on Biomedical Health Informatics (ICBHI) respiratory sound dataset. Building upon the proposed ASC framework, the ICBHI tasks were tackled with a deep learning framework, and the resulting system shown to be capable at detecting respiratory anomaly cycles and diseases.
翻译:该论文侧重于处理声学场景分类(ASC)的任务,然后将ASC开发的技术应用于检测呼吸系统疾病的实际应用。为了应对ASC的挑战,该论文涉及直接影响ASC系统性能的三个主要因素。首先,该论文探讨了投入特征,利用多种光谱(log-mel、Gamma和CQT)进行低层次地貌提取,以解决不具有充分歧视性或描述性输入特征的问题。接着,引入了一个全新的 Eccoder网络架构。Eccoder首先将每个低水平光谱循环转换为高水平中间特征,或嵌入,从而将这些高水平特征结合起来,形成一个非常独特的复合特征。然后,该综合或组合特征通过分类性性性功能探索,利用诸如随机森林、多层感知(MLP)和专家解析(MoE)等不同级特征提取。通过使用这个 Encoder-Decoder 网络架构,它有助于降低ASC系统低水平的光谱光谱循环的计算成本,从而将这些高水平的光谱化的光谱学框架结合起来,因此,在ASC-CRal-Servial应用这一系统上展示了一种常规应用。