pith. sign in

Imaging Time-Series to Improve Classification and Imputation

1 Pith paper cite this work. Polarity classification is still indexing.

1 Pith paper citing it
abstract

Inspired by recent successes of deep learning in computer vision, we propose a novel framework for encoding time series as different types of images, namely, Gramian Angular Summation/Difference Fields (GASF/GADF) and Markov Transition Fields (MTF). This enables the use of techniques from computer vision for time series classification and imputation. We used Tiled Convolutional Neural Networks (tiled CNNs) on 20 standard datasets to learn high-level features from the individual and compound GASF-GADF-MTF images. Our approaches achieve highly competitive results when compared to nine of the current best time series classification approaches. Inspired by the bijection property of GASF on 0/1 rescaled data, we train Denoised Auto-encoders (DA) on the GASF images of four standard and one synthesized compound dataset. The imputation MSE on test data is reduced by 12.18%-48.02% when compared to using the raw data. An analysis of the features and weights learned via tiled CNNs and DAs explains why the approaches work.

fields

cs.MA 1

years

2026 1

verdicts

UNVERDICTED 1

clear filters

representative citing papers

Decision-Level Fusion for Robust Wearable Affect Recognition

cs.MA · 2026-05-14 · unverdicted · novelty 4.0

Decision-level aggregation with uncertainty-weighted modalities using FBSE-EWT features is at least as good as feature-level fusion 84% of the time and strictly better 48% of the time on WESAD for baseline/stress/amusement classification.

citing papers explorer

Showing 1 of 1 citing paper after filters.

  • Decision-Level Fusion for Robust Wearable Affect Recognition cs.MA · 2026-05-14 · unverdicted · none · ref 17 · internal anchor

    Decision-level aggregation with uncertainty-weighted modalities using FBSE-EWT features is at least as good as feature-level fusion 84% of the time and strictly better 48% of the time on WESAD for baseline/stress/amusement classification.