On Pitfalls of Measuring Occlusion Robustness through Data Distortion

11/24/2022
by   Antonia Marcu, et al.
0

Over the past years, the crucial role of data has largely been shadowed by the field's focus on architectures and training procedures. We often cause changes to the data without being aware of their wider implications. In this paper we show that distorting images without accounting for the artefacts introduced leads to biased results when establishing occlusion robustness. To ensure models behave as expected in real-world scenarios, we need to rule out the impact added artefacts have on evaluation. We propose a new approach, iOcclusion, as a fairer alternative for applications where the possible occluders are unknown.

READ FULL TEXT
research
10/26/2021

On the Effects of Data Distortion on Model Analysis and Training

Data modification can introduce artificial information. It is often assu...
research
05/12/2022

Delving into High-Quality Synthetic Face Occlusion Segmentation Datasets

This paper performs comprehensive analysis on datasets for occlusion-awa...
research
03/30/2021

Improving robustness against common corruptions with frequency biased models

CNNs perform remarkably well when the training and test distributions ar...
research
04/21/2021

SOGAN: 3D-Aware Shadow and Occlusion Robust GAN for Makeup Transfer

In recent years, virtual makeup applications have become more and more p...
research
06/12/2022

Object Occlusion of Adding New Categories in Objection Detection

Building instance detection models that are data efficient and can handl...
research
06/30/2020

Using Human Psychophysics to Evaluate Generalization in Scene Text Recognition Models

Scene text recognition models have advanced greatly in recent years. Ins...
research
05/08/2018

Optimization of Occlusion-Inducing Depth Pixels in 3-D Video Coding

The optimization of occlusion-inducing depth pixels in depth map coding ...

Please sign up or login with your details

Forgot password? Click here to reset