2022
DOI: 10.1109/access.2022.3148711
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Benchmarking Transfer Learning Strategies in Time-Series Imaging: Recommendations for Analyzing Raw Sensor Data

Abstract: With the growing availability and complexity of time-series sequences, scalable and robust machine learning approaches are required that overcome the sampling challenge of quantitatively sufficient training data. Following the research trend towards the deep learning-based analysis of time-series encoded as images, this study proposes a time-series imaging workflow that overcomes the challenge of quantitatively limited sensor data across domains (i.e., medicine and engineering). After systematically identifyin… Show more

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Cited by 5 publications
(3 citation statements)
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“…Various TL techniques can be employed based on data availability, domain application, and specific tasks [226,227] (Fig. 7).…”
Section: • Transfer Learning Strategiesmentioning
confidence: 99%
“…Various TL techniques can be employed based on data availability, domain application, and specific tasks [226,227] (Fig. 7).…”
Section: • Transfer Learning Strategiesmentioning
confidence: 99%
“…However, despite the novelty of the research field, time series-based TL has already been applied in various fields like manufacturing [15], finance [16], geoscience [17], mobility [18], and medicine [19]. Successfully solved tasks include time series imaging [20], anomaly detection [21], classification [22], and forecasting [23]. A seminal work applying TL to time series classification analyzed how the pretraining of a model with a different source datasets affects the classification accuracy of the target task [24].…”
Section: Transfer Learning For Time Seriesmentioning
confidence: 99%
“…However, despite the novelty of the research field, time series-based TL has already been applied in various fields like manufacturing [ 15 ], finance [ 16 ], geoscience [ 17 ], mobility [ 18 ], and medicine [ 19 ]. Successfully solved tasks include time series imaging [ 20 ], anomaly detection [ 21 ], classification [ 22 ], and forecasting [ 23 ]. A seminal work applying TL to time series classification analyzed how the pretraining of a model with different source datasets affects the classification accuracy of the target task [ 24 ].…”
Section: Literature Researchmentioning
confidence: 99%