Unsupervised Abnormality Detection through Mixed Structure Regularization (MSR) in Deep Sparse Autoencoders

02/28/2019
by   Moti Freiman, et al.
0

Deep sparse auto-encoders with mixed structure regularization (MSR) in addition to explicit sparsity regularization term and stochastic corruption of the input data with Gaussian noise have the potential to improve unsupervised abnormality detection. Unsupervised abnormality detection based on identifying outliers using deep sparse auto-encoders is a very appealing approach for medical computer aided detection systems as it requires only healthy data for training rather than expert annotated abnormality. In the task of detecting coronary artery disease from Coronary Computed Tomography Angiography (CCTA), our results suggests that the MSR has the potential to improve overall performance by 20-30

READ FULL TEXT

page 15

page 16

page 17

research
07/04/2019

Unsupervised Anomaly Localization using Variational Auto-Encoders

An assumption-free automatic check of medical images for potentially ove...
research
06/08/2022

What do we learn? Debunking the Myth of Unsupervised Outlier Detection

Even though auto-encoders (AEs) have the desirable property of learning ...
research
04/11/2021

Saddlepoints in Unsupervised Least Squares

This paper sheds light on the risk landscape of unsupervised least squar...
research
03/07/2019

Only sparsity based loss function for learning representations

We study the emergence of sparse representations in neural networks. We ...
research
01/29/2022

A new Sparse Auto-encoder based Framework using Grey Wolf Optimizer for Data Classification Problem

One of the most important properties of deep auto-encoders (DAEs) is the...
research
01/16/2013

Discriminative Recurrent Sparse Auto-Encoders

We present the discriminative recurrent sparse auto-encoder model, compr...
research
09/01/2015

Learning Deep ℓ_0 Encoders

Despite its nonconvex nature, ℓ_0 sparse approximation is desirable in m...

Please sign up or login with your details

Forgot password? Click here to reset