Thứ sáu, 25/04/2025 | 12:23 GMT+7
Using wavelet transform to improve quality classfication for time-series data sequence Abstract: This paper proposes a solution using wavelet transform to extract features from a time-series, the outputs of the pre-processing is input of a neural network in order to classify and predict near future trends of the data. The approach is based on the CWT and DWT of time-series. The result which is tested on real datasets HAR (Human Activity Recognition), shows the improvements in accuracy, reaching 94%. It is an improvement compared to previously reported results for previous systems. Key words:Time-series, wavelet transform, machine learning, deep learning. |
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03/04/2025