基于动态权值自适应多任务学习的声场景和声事件联合分析

IF 0.6 Q4 ACOUSTICS Acoustical Science and Technology Pub Date : 2023-05-01 DOI:10.1250/ast.44.167
Kayo Nada, Keisuke Imoto, Takao Tsuchiya
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引用次数: 0

摘要

声场景分类(ASC)和声事件检测(SED)是环境声分析中的主要问题。考虑到声音场景和声音事件之间的密切关系,前人提出了利用基于多任务学习(MTL)的神经网络对声音场景和声音事件进行联合分析。传统方法使用恒权的ASC和SED损失函数的线性组合来训练基于mtl的模型。然而,传统的基于MTL的方法的性能在很大程度上依赖于ASC和SED损失的权重,很难确定ASC和SED的MTL损失的恒定权重之间的适当平衡。因此,本文提出了基于动态加权平均(DWA)和多焦点损失(MFL)的ASC和SED的MTL动态权重自适应方法,自动调整学习权重。通过对两种方法的比较,我们阐明了相对于DWA和MFL的具体方法,loss weight的动态自适应通常更有利于基于MTL的ASC和SED的联合分析。此外,我们还研究了ASC和SED联合模型的训练是如何动态进行的,并揭示了损失权值是如何影响它们的性能的。
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Joint analysis of acoustic scenes and sound events based on multitask learning with dynamic weight adaptation
Acoustic scene classification (ASC) and sound event detection (SED) are major topics in environmental sound analysis. Considering that acoustic scenes and sound events are closely related to each other, the joint analysis of acoustic scenes and sound events using multitask learning (MTL)-based neural networks was proposed in some previous works. Conventional methods train MTL-based models using a linear combination of ASC and SED loss functions with constant weights. However, the performance of conventional MTL-based methods depends strongly on the weights of the ASC and SED losses, and it is difficult to determine the appropriate balance between the constant weights of the losses of MTL of ASC and SED. In this paper, we thus propose dynamic weight adaptation methods for MTL of ASC and SED based on dynamic weight average (DWA) and multi-focal loss (MFL) to adjust the learning weights automatically. By comparing the two methods, we then clarify how the dynamic adaptation of the loss weights, rather than specific methods of DWA and MFL, generally benefits the joint analysis of ASC and SED based on MTL. Moreover, we investigate how the training of the joint ASC and SED model dynamically progresses and disclose how the loss weights affect their performance.
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来源期刊
CiteScore
1.60
自引率
14.30%
发文量
52
期刊介绍: Acoustical Science and Technology(AST) is a bimonthly open-access journal edited by the Acoustical Society of Japan and was established in 1980 as the Journal of Acoustical Society of Japan (E). The title of the journal was changed to the current title in 2001. AST publishes about 100 high-quality articles (including papers, technical reports, and acoustical letters) each year. The scope of the journal covers all fields of acoustics, both scientific and technological, including (but not limited to) the following research areas. Psychological and Physiological Acoustics Speech Ultrasonics Underwater Acoustics Noise and Vibration Electroacoustics Musical Acoustics Architectural Acoustics Sonochemistry Acoustic Imaging.
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