2022
DOI: 10.5121/ijsc.2022.133
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Abstract: This paper is to introduce a novel semi-supervised methodology, the enhanced incremental principal component analysis ("IPCA") based deep convolutional neural network autoencoder ("DCNN-AE) for Anomalous Sound Detection ("ASD") with high accuracy and computing efficiency. This hybrid methodology is to adopt Enhanced IPCA to reduce the dimensionality and then to use DCNN-AE to extract the features of the sample sound and detect the anomality. In this project, 228 sets of normal sounds and 100 sets of anomaly so… Show more

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