3DVAE-LSTM for Extremely Rare Anomaly Signal Generation

T. Kaewkiriya, K. Woraratpanya
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引用次数: 2

Abstract

To overcome the uncontrolled quality output problem of data augmentation, many data generation frameworks have been proposed recently. The main concept of the data generation is for ensuring the quality of the output samples which maintain the original characteristics and highly provide the diversity of data. The benefit of this concept is improving the performance of deep learning tasks that suffer from the lack of available training samples, such as anomaly classification. Recently, 3D variational autoencoder for extremely rare case signal generation (3DVAE-ERSG) was introduced. This framework achieves the best synthesis samples for multi-class classification deep learning training. However, it is not so well applicable to sequential data. Therefore, this paper proposed a 3DVAE-LSTM framework. The new framework was replaced a VAE’s feed-forward neural network with a long short-term memory (LSTM) neural network that works well with time-series signals. The experimental results show that the classification models trained with data generated by 3DVAE-LSTM have better performance than 3DVAE-ERSG in every aspect.
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极罕见异常信号生成的3DVAE-LSTM
为了克服数据扩增过程中不受控制的质量输出问题,近年来提出了许多数据生成框架。数据生成的主要概念是保证输出样本的质量,既保持了原始特征,又高度提供了数据的多样性。这个概念的好处是提高了缺乏可用训练样本的深度学习任务的性能,比如异常分类。近年来,一种用于极罕见情况信号生成的三维变分自编码器(3DVAE-ERSG)问世。该框架实现了多类分类深度学习训练的最佳综合样本。然而,它不太适用于顺序数据。因此,本文提出了一个3DVAE-LSTM框架。新的框架用长短期记忆(LSTM)神经网络取代了VAE的前馈神经网络,这种神经网络可以很好地处理时间序列信号。实验结果表明,用3DVAE-LSTM生成的数据训练的分类模型在各方面都优于3DVAE-ERSG。
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