Pixel-Wise Smoothing for Certified Robustness Against Camera Motion Perturbations
Abstract
Deep learning-based visual perception models lack robustness when faced with camera motion perturbations in practice. The current certification process for assessing robustness is costly and time-consuming due to the extensive number of image projections required for Monte Carlo sampling in the 3D camera motion space. To address these challenges, we present a novel, efficient, and practical framework for certifying the robustness of 3D-2D projective transformations against camera motion perturbations. Our approach leverages a smoothing distribution over the 2D-pixel space instead of in the 3D physical space, eliminating the need for costly camera motion sampling and significantly enhancing the efficiency of robustness certifications. With the pixel-wise smoothed classifier, we are able to fully upper bound the projection errors using a technique of uniform partitioning in camera motion space. Additionally, we extend our certification framework to a more general scenario where only a single-frame point cloud is required in the projection oracle. Through extensive experimentation, we validate the trade-off between effectiveness and efficiency enabled by our proposed method. Remarkably, our approach achieves approximately 80% certified accuracy while utilizing only 30% of the projected image frames.
Cite
Text
Hu et al. "Pixel-Wise Smoothing for Certified Robustness Against Camera Motion Perturbations." Artificial Intelligence and Statistics, 2024.Markdown
[Hu et al. "Pixel-Wise Smoothing for Certified Robustness Against Camera Motion Perturbations." Artificial Intelligence and Statistics, 2024.](https://mlanthology.org/aistats/2024/hu2024aistats-pixelwise/)BibTeX
@inproceedings{hu2024aistats-pixelwise,
title = {{Pixel-Wise Smoothing for Certified Robustness Against Camera Motion Perturbations}},
author = {Hu, Hanjiang and Liu, Zuxin and Li, Linyi and Zhu, Jiacheng and Zhao, Ding},
booktitle = {Artificial Intelligence and Statistics},
year = {2024},
pages = {217-225},
volume = {238},
url = {https://mlanthology.org/aistats/2024/hu2024aistats-pixelwise/}
}