DMIRSPNov 21, 2019

On the separation of shape and temporal patterns in time series -Application to signature authentication-

arXiv:1911.09360v21 citations
Originality Incremental advance
AI Analysis

This work addresses signature authentication by separating shape and time components, showing incremental improvements in benchmark performance.

The paper tackles the problem of separating shape and temporal patterns in time series, proposing a probabilistic temporal alignment algorithm adapted from centroid estimation. On real data for online handwritten signature authentication, it achieves results slightly above the state of the art on three evaluated tasks.

In this article we address the problem of separation of shape and time components in time series. The concept ofshape that we tackle is termed temporally neutral to consider that it may possibly exist outside of any temporal specification, as it is the case for a geometric form. We propose to exploit and adapt a probabilistic temporal alignment algorithm, initially designed to estimate the centroid of a set of time series, to build some heuristicelements of solution to this separation problem. We show on some controlled synthetic data that this algorithm meets empirically our initial objectives. We finally evaluate it on real data, in the context of some on-line handwritten signature authentication benchmarks. On the three evaluated tasks, our approach based on the separation of signature shape and associated temporal patterns is positioned slightly above the current state of the art demonstrating the applicative benefit of this separating problem.

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