diffeomorphic temporal alignment net
Diffeomorphic Temporal Alignment Nets
Time-series analysis is confounded by nonlinear time warping of the data. Traditional methods for joint alignment do not generalize: after aligning a given signal ensemble, they lack a mechanism, that does not require solving a new optimization problem, to align previously-unseen signals. In the multi-class case, they must also first classify the test data before aligning it. Here we propose the Diffeomorphic Temporal alignment Net (DTAN), a learning-based method for time-series joint alignment. Via flexible temporal transformer layers, DTAN learns and applies an input-dependent nonlinear time warping to its input signal.
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Diffeomorphic Temporal Alignment Nets
Time-series analysis is confounded by nonlinear time warping of the data. Traditional methods for joint alignment do not generalize: after aligning a given signal ensemble, they lack a mechanism, that does not require solving a new optimization problem, to align previously-unseen signals. In the multi-class case, they must also first classify the test data before aligning it. Here we propose the Diffeomorphic Temporal alignment Net (DTAN), a learning-based method for time-series joint alignment. Via flexible temporal transformer layers, DTAN learns and applies an input-dependent nonlinear time warping to its input signal.
Reviews: Diffeomorphic Temporal Alignment Nets
This paper developed a deep learning approach to aligning time series by incorporating a diffeomorphism. The reviewers found the paper enjoyable to read as the method was clearly explained and their were nice visualizations to present the intuition. The majority of the reviewers thought that the experiments were thorough enough to demonstrate the efficacy of the algorithm, however, one reviewer would have liked to see the method used for something beyond time-series classification. The author response did not really address this point to the reviewer's satisfaction, so the authors should consider this for the camera-ready version of the paper. Finally, the reviewers pointed out that the paper has some notational issues and the intro need some work to motivate the work and provide background.
Diffeomorphic Temporal Alignment Nets
Time-series analysis is confounded by nonlinear time warping of the data. Traditional methods for joint alignment do not generalize: after aligning a given signal ensemble, they lack a mechanism, that does not require solving a new optimization problem, to align previously-unseen signals. In the multi-class case, they must also first classify the test data before aligning it. Here we propose the Diffeomorphic Temporal alignment Net (DTAN), a learning-based method for time-series joint alignment. Via flexible temporal transformer layers, DTAN learns and applies an input-dependent nonlinear time warping to its input signal.
Diffeomorphic Temporal Alignment Nets
Weber, Ron A. Shapira, Eyal, Matan, Skafte, Nicki, Shriki, Oren, Freifeld, Oren
Time-series analysis is confounded by nonlinear time warping of the data. Traditional methods for joint alignment do not generalize: after aligning a given signal ensemble, they lack a mechanism, that does not require solving a new optimization problem, to align previously-unseen signals. In the multi-class case, they must also first classify the test data before aligning it. Here we propose the Diffeomorphic Temporal alignment Net (DTAN), a learning-based method for time-series joint alignment. Via flexible temporal transformer layers, DTAN learns and applies an input-dependent nonlinear time warping to its input signal.