1D-Convolutional Neural Network Architecture for Generalized Time-series Segmentation
POSTER
Abstract
Time segmentation of experimental data is a common and often difficult task. Consequently, it is of interest to automate this type of segmentation to reduce manual inputs, which are labor intensive and less consistent. However, simple thresholding algorithms are often insufficiently robust due either to noise or inconsistent data. This paper proposes a simple 1D convolutional neural net (CNN) architecture as a generalized solution for typical time segmentation tasks. The layer architecture, training methods, and methods for simple customization will be described as well as the results of application to three separate data streams: facility condition segmentation, video highlight segmentation, and calorimeter time-series segmentation. In all three test cases the 1D-CNN performs better than tailored integral/derivative/thresholding algorithms across a range of signal-to-noise levels.
Presenters
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Magnus A Haw
NASA Ames Research Center
Authors
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Magnus A Haw
NASA Ames Research Center
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Alexandre M Quintart
Flying Squirrel, Brussels, 1150, Belgium
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Koushik Chennakesavan
University of Texas at Austin