Traversing Latent Space using Decision Ferns

12/06/2018
by   Yan Zuo, et al.
2

The practice of transforming raw data to a feature space so that inference can be performed in that space has been popular for many years. Recently, rapid progress in deep neural networks has given both researchers and practitioners enhanced methods that increase the richness of feature representations, be it from images, text or speech. In this work we show how a constructed latent space can be explored in a controlled manner and argue that this complements well founded inference methods. For constructing the latent space a Variational Autoencoder is used. We present a novel controller module that allows for smooth traversal in the latent space and construct an end-to-end trainable framework. We explore the applicability of our method for performing spatial transformations as well as kinematics for predicting future latent vectors of a video sequence.

READ FULL TEXT

page 10

page 14

research
03/25/2021

Variational Autoencoder-Based Vehicle Trajectory Prediction with an Interpretable Latent Space

This paper introduces the Descriptive Variational Autoencoder (DVAE), an...
research
10/08/2018

Towards the Latent Transcriptome

In this work we propose a method to compute continuous embeddings for km...
research
02/03/2020

Learning Extremal Representations with Deep Archetypal Analysis

Archetypes are typical population representatives in an extremal sense, ...
research
09/26/2019

Mathematical Reasoning in Latent Space

We design and conduct a simple experiment to study whether neural networ...
research
05/12/2023

ELSA – Enhanced latent spaces for improved collider simulations

Simulations play a key role for inference in collider physics. We explor...
research
09/30/2022

Holographic-(V)AE: an end-to-end SO(3)-Equivariant (Variational) Autoencoder in Fourier Space

Group-equivariant neural networks have emerged as a data-efficient appro...
research
03/21/2019

Deep Learning with Anatomical Priors: Imitating Enhanced Autoencoders in Latent Space for Improved Pelvic Bone Segmentation in MRI

We propose a 2D Encoder-Decoder based deep learning architecture for sem...

Please sign up or login with your details

Forgot password? Click here to reset