Catch Me If You Can

04/18/2019
by   Antoine Viscardi, et al.
0

As advances in signature recognition have reached a new plateau of performance at around 2 alternative approaches. The approach detailed in this paper looks at using Variational Auto-Encoders (VAEs) to learn a latent space representation of genuine signatures. This is then used to pass unlabelled signatures such that only the genuine ones will successfully be reconstructed by the VAE. This latent space representation and the reconstruction loss is subsequently used by random forest and kNN classifiers for prediction. Subsequently, VAE disentanglement and the possibility of posterior collapse are ascertained and analysed. The final results suggest that while this method performs less well than existing alternatives, further work may allow this to be used as part of an ensemble for future models.

READ FULL TEXT
research
10/18/2020

Variational Capsule Encoder

We propose a novel capsule network based variational encoder architectur...
research
02/11/2018

On the Latent Space of Wasserstein Auto-Encoders

We study the role of latent space dimensionality in Wasserstein auto-enc...
research
03/17/2018

Note: Variational Encoding of Protein Dynamics Benefits from Maximizing Latent Autocorrelation

As deep Variational Auto-Encoder (VAE) frameworks become more widely use...
research
06/14/2019

Modality Conversion of Handwritten Patterns by Cross Variational Autoencoders

This research attempts to construct a network that can convert online an...
research
03/31/2020

Cross Scene Prediction via Modeling Dynamic Correlation using Latent Space Shared Auto-Encoders

This work addresses on the following problem: given a set of unsynchroni...
research
07/22/2020

Learning the Latent Space of Robot Dynamics for Cutting Interaction Inference

Utilization of latent space to capture a lower-dimensional representatio...
research
02/17/2023

G-Signatures: Global Graph Propagation With Randomized Signatures

Graph neural networks (GNNs) have evolved into one of the most popular d...

Please sign up or login with your details

Forgot password? Click here to reset