Time series classification has been around for decades in the data-mining and machine learning communities. In this paper, we investigate the use of convolutional neural networks (CNN) for time series classification. Such networks have been widely used in many domains like computer vision and speech recognition, but only a little for time series classification. We design a convolu-tional neural network that consists of two convolutional layers. One drawback with CNN is that they need a lot of training data to be efficient. We propose two ways to circumvent this problem: designing data-augmentation techniques and learning the network in a semi-supervised way using training time series from different datasets. These techniques are experimentally evaluated on a benchmark of time series datasets.
Description
HAL-SHS - Sciences de l'Homme et de la Société - Data Augmentation for Time Series Classification using Convolutional Neural Networks
%0 Generic
%1 guennec2016augmentation
%A Guennec, Arthur Le
%A Malinowski, Simon
%A Tavenard, Romain
%D 2016
%K augmentation cnn convolutional data
%T Data Augmentation for Time Series Classification using Convolutional Neural Networks
%U https://halshs.archives-ouvertes.fr/halshs-01357973/
%X Time series classification has been around for decades in the data-mining and machine learning communities. In this paper, we investigate the use of convolutional neural networks (CNN) for time series classification. Such networks have been widely used in many domains like computer vision and speech recognition, but only a little for time series classification. We design a convolu-tional neural network that consists of two convolutional layers. One drawback with CNN is that they need a lot of training data to be efficient. We propose two ways to circumvent this problem: designing data-augmentation techniques and learning the network in a semi-supervised way using training time series from different datasets. These techniques are experimentally evaluated on a benchmark of time series datasets.
@misc{guennec2016augmentation,
abstract = {Time series classification has been around for decades in the data-mining and machine learning communities. In this paper, we investigate the use of convolutional neural networks (CNN) for time series classification. Such networks have been widely used in many domains like computer vision and speech recognition, but only a little for time series classification. We design a convolu-tional neural network that consists of two convolutional layers. One drawback with CNN is that they need a lot of training data to be efficient. We propose two ways to circumvent this problem: designing data-augmentation techniques and learning the network in a semi-supervised way using training time series from different datasets. These techniques are experimentally evaluated on a benchmark of time series datasets.},
added-at = {2020-06-27T21:15:14.000+0200},
author = {Guennec, Arthur Le and Malinowski, Simon and Tavenard, Romain},
biburl = {https://www.bibsonomy.org/bibtex/2948be84d43c9786220868520e8d7068f/thoni},
description = {HAL-SHS - Sciences de l'Homme et de la Société - Data Augmentation for Time Series Classification using Convolutional Neural Networks},
id = {https://halshs.archives-ouvertes.fr/halshs-01357973, halshs-01357973, https://halshs.archives-ouvertes.fr/halshs-01357973/document},
interhash = {e665f8ecefef5f88905773fb55edaa16},
intrahash = {948be84d43c9786220868520e8d7068f},
keywords = {augmentation cnn convolutional data},
timestamp = {2020-06-27T21:15:14.000+0200},
title = {Data Augmentation for Time Series Classification using Convolutional Neural Networks},
type = {proceedings},
url = {https://halshs.archives-ouvertes.fr/halshs-01357973/},
year = 2016
}