2021
DOI: 10.3390/s22010157
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Time Series Classification with InceptionFCN

Abstract: Deep neural networks (DNN) have proven to be efficient in computer vision and data classification with an increasing number of successful applications. Time series classification (TSC) has been one of the challenging problems in data mining in the last decade, and significant research has been proposed with various solutions, including algorithm-based approaches as well as machine and deep learning approaches. This paper focuses on combining the two well-known deep learning techniques, namely the Inception mod… Show more

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Cited by 5 publications
(5 citation statements)
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References 15 publications
(19 reference statements)
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“…Finally, two-stage convolution and two fully connected layers are applied to classify the images generated by RP. [84] 2019 Inception V1 InceptionTime [12] 2019 Inception V4 Ensemble EEG-inception [85] 2021 InceptionTime Inception-FCN [86] 2021 InceptionTime + FCN KDCTime [87] 2022 InceptionTime Knowledge Distillation, Label smoothing computer vision domain, pre-trained Inception v3 [79] was used to map the GADF images into a 2048-dimensional vector space. In the final stage, a multilayer perceptron (MLP) is used with three hidden layers, and a softmax activation function for classification [75].…”
Section: Imaging Time Seriesmentioning
confidence: 99%
See 2 more Smart Citations
“…Finally, two-stage convolution and two fully connected layers are applied to classify the images generated by RP. [84] 2019 Inception V1 InceptionTime [12] 2019 Inception V4 Ensemble EEG-inception [85] 2021 InceptionTime Inception-FCN [86] 2021 InceptionTime + FCN KDCTime [87] 2022 InceptionTime Knowledge Distillation, Label smoothing computer vision domain, pre-trained Inception v3 [79] was used to map the GADF images into a 2048-dimensional vector space. In the final stage, a multilayer perceptron (MLP) is used with three hidden layers, and a softmax activation function for classification [75].…”
Section: Imaging Time Seriesmentioning
confidence: 99%
“…The output of the second inception block is passed to a GAP layer before feeding into a softmax classifier. Due to the favorable performance of InceptionTime for time series classification, various extensions such as EEGinception [85], InceptionFCN [86], and KDCTime [87] have been proposed. Like InceptionTime, EEG-inception uses several inception layers and residual connections as its backbone.…”
Section: 23mentioning
confidence: 99%
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“…The attribution would be done by routine time-series classifier in artificial neural networks. [72] Improving the electrode count will be critical to capture a detailed view of the interactions within the neural network and understand its dynamics.…”
Section: Bandwidthmentioning
confidence: 99%
“…The attribution would be done by routine time‐series classifier in artificial neural networks. [ 72 ]…”
Section: Next Generation Devicesmentioning
confidence: 99%