DOODLER: Determining Out-Of-Distribution Likelihood from Encoder Reconstructions

09/27/2021
by   Jonathan S. Kent, et al.
0

Deep Learning models possess two key traits that, in combination, make their use in the real world a risky prospect. One, they do not typically generalize well outside of the distribution for which they were trained, and two, they tend to exhibit confident behavior regardless of whether or not they are producing meaningful outputs. While Deep Learning possesses immense power to solve realistic, high-dimensional problems, these traits in concert make it difficult to have confidence in their real-world applications. To overcome this difficulty, the task of Out-Of-Distribution (OOD) Detection has been defined, to determine when a model has received an input from outside of the distribution for which it is trained to operate. This paper introduces and examines a novel methodology, DOODLER, for OOD Detection, which directly leverages the traits which result in its necessity. By training a Variational Auto-Encoder (VAE) on the same data as another Deep Learning model, the VAE learns to accurately reconstruct In-Distribution (ID) inputs, but not to reconstruct OOD inputs, meaning that its failure state can be used to perform OOD Detection. Unlike other work in the area, DOODLER requires only very weak assumptions about the existence of an OOD dataset, allowing for more realistic application. DOODLER also enables pixel-wise segmentations of input images by OOD likelihood, and experimental results show that it matches or outperforms methodologies that operate under the same constraints.

READ FULL TEXT

page 19

page 20

research
10/05/2020

Bigeminal Priors Variational auto-encoder

Variational auto-encoders (VAEs) are an influential and generally-used c...
research
07/16/2020

Detecting Out-of-distribution Samples via Variational Auto-encoder with Reliable Uncertainty Estimation

In unsupervised learning, variational auto-encoders (VAEs) are an influe...
research
11/12/2020

VCE: Variational Convertor-Encoder for One-Shot Generalization

Variational Convertor-Encoder (VCE) converts an image to various styles;...
research
10/04/2021

Assessing glaucoma in retinal fundus photographs using Deep Feature Consistent Variational Autoencoders

One of the leading causes of blindness is glaucoma, which is challenging...
research
01/31/2019

VAE-GANs for Probabilistic Compressive Image Recovery: Uncertainty Analysis

Recovering high-quality images from limited sensory data is a challengin...
research
08/14/2019

Unsupervised Out-of-Distribution Detection by Maximum Classifier Discrepancy

Since deep learning models have been implemented in many commercial appl...
research
09/17/2017

Multi-Entity Dependence Learning with Rich Context via Conditional Variational Auto-encoder

Multi-Entity Dependence Learning (MEDL) explores conditional correlation...

Please sign up or login with your details

Forgot password? Click here to reset