Back to Search Start Over

Robustar: Interactive Toolbox Supporting Precise Data Annotation for Robust Vision Learning

Authors :
Chen, Chonghan
Wang, Haohan
Hu, Leyang
Zhang, Yuhao
Lyu, Shuguang
Wu, Jingcheng
Li, Xinnuo
Sun, Linjing
Xing, Eric P.
Publication Year :
2022

Abstract

We introduce the initial release of our software Robustar, which aims to improve the robustness of vision classification machine learning models through a data-driven perspective. Building upon the recent understanding that the lack of machine learning model's robustness is the tendency of the model's learning of spurious features, we aim to solve this problem from its root at the data perspective by removing the spurious features from the data before training. In particular, we introduce a software that helps the users to better prepare the data for training image classification models by allowing the users to annotate the spurious features at the pixel level of images. To facilitate this process, our software also leverages recent advances to help identify potential images and pixels worthy of attention and to continue the training with newly annotated data. Our software is hosted at the GitHub Repository https://github.com/HaohanWang/Robustar.<br />Comment: This paper introduces the first release of our software. The paper is expected to be updated as we continue to develop the software

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2207.08944
Document Type :
Working Paper