Dual-path convolutional neural network based on band interaction block for acoustic scene classification

IF 0.4 4区 计算机科学 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Ieice Transactions on Fundamentals of Electronics Communications and Computer Sciences Pub Date : 2023-01-01 DOI:10.1587/transfun.2023eal2056
Pengxu JIANG, Yang YANG, Yue XIE, Cairong ZOU, Qingyun WANG
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Abstract

Convolutional neural network (CNN) is widely used in acoustic scene classification (ASC) tasks. In most cases, local convolution is utilized to gather time-frequency information between spectrum nodes. It is challenging to adequately express the non-local link between frequency domains in a finite convolution region. In this paper, we propose a dual-path convolutional neural network based on band interaction block (DCNN-bi) for ASC, with mel-spectrogram as the model's input. We build two parallel CNN paths to learn the high-frequency and low-frequency components of the input feature. Additionally, we have created three band interaction blocks (bi-blocks) to explore the pertinent nodes between various frequency bands, which are connected between two paths. Combining the time-frequency information from two paths, the bi-blocks with three distinct designs acquire non-local information and send it back to the respective paths. The experimental results indicate that the utilization of the bi-block has the potential to improve the initial performance of the CNN substantially. Specifically, when applied to the DCASE 2018 and DCASE 2020 datasets, the CNN exhibited performance improvements of 1.79% and 3.06%, respectively.
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基于波段交互块的双路径卷积神经网络声学场景分类
卷积神经网络(CNN)广泛应用于声学场景分类(ASC)任务中。在大多数情况下,利用局部卷积来收集频谱节点之间的时频信息。如何在有限的卷积域中充分表达频域间的非局部联系是一个挑战。本文提出了一种基于频带相互作用块的双路径卷积神经网络(DCNN-bi),以mel-谱图作为模型的输入。我们建立了两条并行的CNN路径来学习输入特征的高频和低频分量。此外,我们还创建了三个波段交互块(bi-block)来探索不同频段之间的相关节点,这些节点连接在两条路径之间。结合两条路径的时频信息,三种不同设计的双块获取非局部信息并将其发送回各自的路径。实验结果表明,双块的使用有可能大大提高CNN的初始性能。具体来说,当应用于DCASE 2018和DCASE 2020数据集时,CNN的性能分别提高了1.79%和3.06%。
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来源期刊
CiteScore
1.10
自引率
20.00%
发文量
137
审稿时长
3.9 months
期刊介绍: Includes reports on research, developments, and examinations performed by the Society''s members for the specific fields shown in the category list such as detailed below, the contents of which may advance the development of science and industry: (1) Reports on new theories, experiments with new contents, or extensions of and supplements to conventional theories and experiments. (2) Reports on development of measurement technology and various applied technologies. (3) Reports on the planning, design, manufacture, testing, or operation of facilities, machinery, parts, materials, etc. (4) Presentation of new methods, suggestion of new angles, ideas, systematization, software, or any new facts regarding the above.
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