半监督复调声事件检测中数据增强的比较评价

L. Delphin-Poulat, R. Nicol, C. Plapous, K. Peron
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引用次数: 4

摘要

在智能建筑音频环境智能系统的背景下,复调声事件检测旨在检测、定位和分类房间内记录的任何声音事件。如今,大多数模型都是基于深度学习,需要训练大型数据库。我们提出了一种基于“平均教师”方法的半监督学习的CRNN系统,结合数据增强来克服训练数据集规模有限的问题,进一步提高性能。该模型已提交给DCASE 2019挑战赛,在提交的58个系统中排名第二。在本研究中,比较了几种传统的数据增强方法:时移或频移和背景噪声的加入。结果表明,采用时移和噪声添加的数据增强,结合类相关的中值滤波,将性能提高了9%,在DCASE 2019验证集上,基于事件的f1得分为43.2%。然而,这些工具依赖于在现实生活中观察到的类内变异性的粗糙建模(即数据的随机变化)。将声学知识注入到增强方法的设计中似乎是一种很有前途的方法,这使我们为未来的工作提出了物理启发建模的策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Assessment of Data Augmentation for Semi-Supervised Polyphonic Sound Event Detection
In the context of audio ambient intelligence systems in Smart Buildings, polyphonic Sound Event Detection aims at detecting, localizing and classifying any sound event recorded in a room. Today, most of models are based on Deep Learning, requiring large databases to be trained. We propose a CRNN system exploiting unlabeled data with semi-supervised learning based on the “Mean teacher” method, in combination with data augmentation to overcome the limited size of the training dataset and to further improve the performances. This model was submitted to the challenge DCASE 2019 and was ranked second out of 58 systems submitted. In the present study, several conventional solutions of data augmentation are compared: time or frequency shifting, and background noise addition. It is shown that data augmentation with time shifting and noise addition, in combination with class-dependent median filtering, improves the performance by 9%, leading to an event-based F1-score of 43.2% with DCASE 2019 validation set. However, these tools rely on a coarse modelling (i.e. random variation of data) of intra-class variability observed in real life. Injecting acoustic knowledge into the design of augmentation methods seems to be a promising way forward, leading us to propose strategies of physics-inspired modelling for future work.
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