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Auxiliary Classifier Generative Adversarial Network With Soft Labels in Imbalanced Acoustic Event Detection

机译:带有不平衡声事件检测的带有软标签的辅助分类器生成对抗网络

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摘要

In acoustic event detection, the training data size of some acoustic events is often small and imbalanced. To deal with this, this paper proposes generating the virtual training data categorically using the auxiliary classifier generative adversarial networks. Soft labels of acoustic events are first calculated to represent the acoustic event localization information. The closer the current frame is to the middle of the manually labeled acoustic event, the higher the soft label will be, which makes the soft labels positively correlated with the acoustic event localization. Then, the acoustic event class and the quantized soft labels are used as the input condition to the auxiliary classifier generative adversarial networks to generate an arbitrary number of training samples. Experimental results on the TUT Sound Event 2016 under the home environment and TUT Sound Event 2017 under the street environment demonstrate the improved performance of the proposed technique compared to existing acoustic event detection systems.
机译:在声音事件检测中,某些声音事件的训练数据大小通常很小且不平衡。为了解决这个问题,本文提出使用辅助分类器生成对抗网络分类生成虚拟训练数据。首先计算声事件的软标签以表示声事件定位信息。当前帧越靠近手动标记的声事件的中间,软标签将越高,这使得软标签与声事件定位成正相关。然后,将声音事件类别和量化的软标签用作辅助分类器生成对抗网络的输入条件,以生成任意数量的训练样本。在家庭环境下的TUT声音事件2016和街道环境下的TUT声音事件2017的实验结果证明,与现有的声音事件检测系统相比,该技术的性能有所提高。

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