Zusammenfassung
Anomaly detection is a very worthwhile question. However, the anomaly is not
a simple two-category in reality, so it is difficult to give accurate results
through the comparison of similarities. There are already some deep learning
models based on GAN for anomaly detection that demonstrate validity and
accuracy on time series data sets. In this paper, we propose an unsupervised
model-based anomaly detection named LVEAD, which assumpts that the anomalies
are objects that do not fit perfectly with the model. For better handling the
time series, we use the LSTM model as the encoder and decoder part of the VAE
model. Considering to better distinguish the normal and anomaly data, we train
a re-encoder model to the latent space to generate new data. Experimental
results of several benchmarks show that our method outperforms state-of-the-art
anomaly detection techniques.
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