基于自适应广义交叉熵损失的带噪声标记声事件分类

Jun Deng, Chunhui Gao, Qian Feng, Xinzhou Xu, Zhaopeng Chen
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引用次数: 2

摘要

考虑到人工标注大规模数据集的高成本,以获得更好的声音事件分类器性能,数据收集过程已经转向使用互联网,这有助于更容易地收集用户贡献的音频和元数据。然而,标签噪音是不可避免的。为了解决由标签噪声引起的问题,最近提出了几种类型的噪声鲁棒损失函数,作为常用的分类交叉熵(CCE)损失的替代方法,其中一种是广义交叉熵(GCE)损失,它具有最先进的性能。然而,GCE不能同时实现足够的噪声鲁棒性和满意的精度。因此,我们提出自适应GCE损失,自动适应每批噪声标签,以达到足够的噪声鲁棒性和足够的准确性。我们进行了实验,发现所提出的损失的分类精度比CCE和GCE基线分别提高了4.7%和1.2%。我们还证明,与CCE相比,拟议损耗中的清洁数据消耗显着减少了75%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Generalized Cross-Entropy Loss for Sound Event Classification with Noisy Labels
Considering the high cost of manually annotated large-scale datasets for superior sound event classifier performance, the data collection process has shifted to using the Internet, which facilitates easier user-contributed audio and metadata collection. However, label noise is inevitable. To address the problems caused by label noise, several types of noise-robust loss functions have been proposed recently as alternatives to the commonly categorical cross-entropy (CCE) loss, one of which is the generalized cross-entropy (GCE) loss, which demonstrates state-of-the-art performance. However, GCE cannot realize sufficient noise robustness and satisfactory accuracy simultaneously. Thus, we propose adaptive GCE loss, which automatically adapts to noisy labels in every batch to achieve adequate noise robustness and sufficient accuracy. We conducted experiments and found that the classification accuracy of the proposed loss demonstrated 4.7% and 1.2% absolute improvement over the CCE and GCE baselines, respectively. We also demonstrate that clean data consumption in the proposed loss is dramatically reduced by more than 75% compared with CCE.
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