Evaluating the Use of Reconstruction Error for Novelty Localization

07/28/2021
by   Patrick Feeney, et al.
0

The pixelwise reconstruction error of deep autoencoders is often utilized for image novelty detection and localization under the assumption that pixels with high error indicate which parts of the input image are unfamiliar and therefore likely to be novel. This assumed correlation between pixels with high reconstruction error and novel regions of input images has not been verified and may limit the accuracy of these methods. In this paper we utilize saliency maps to evaluate whether this correlation exists. Saliency maps reveal directly how much a change in each input pixel would affect reconstruction loss, while each pixel's reconstruction error may be attributed to many input pixels when layers are fully connected. We compare saliency maps to reconstruction error maps via qualitative visualizations as well as quantitative correspondence between the top K elements of the maps for both novel and normal images. Our results indicate that reconstruction error maps do not closely correlate with the importance of pixels in the input images, making them insufficient for novelty localization.

READ FULL TEXT

page 1

page 4

research
01/26/2021

Evaluating Input Perturbation Methods for Interpreting CNNs and Saliency Map Comparison

Input perturbation methods occlude parts of an input to a function and m...
research
09/03/2018

Learning Saliency Prediction From Sparse Fixation Pixel Map

Ground truth for saliency prediction datasets consists of two types of m...
research
11/29/2019

Sanity Checks for Saliency Metrics

Saliency maps are a popular approach to creating post-hoc explanations o...
research
11/10/2020

Removing Brightness Bias in Rectified Gradients

Interpretation and improvement of deep neural networks relies on better ...
research
06/15/2021

Explaining decision of model from its prediction

This document summarizes different visual explanations methods such as C...
research
08/23/2023

Reframing the Brain Age Prediction Problem to a More Interpretable and Quantitative Approach

Deep learning models have achieved state-of-the-art results in estimatin...
research
05/27/2019

A Simple Saliency Method That Passes the Sanity Checks

There is great interest in *saliency methods* (also called *attribution ...

Please sign up or login with your details

Forgot password? Click here to reset