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Main Authors: Agnihotri, Shashank, Ansari, Amaan, Dackermann, Annika, Rösch, Fabian, Keuper, Margret
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.05091
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author Agnihotri, Shashank
Ansari, Amaan
Dackermann, Annika
Rösch, Fabian
Keuper, Margret
author_facet Agnihotri, Shashank
Ansari, Amaan
Dackermann, Annika
Rösch, Fabian
Keuper, Margret
contents Deep learning (DL) has surpassed human performance on standard benchmarks, driving its widespread adoption in computer vision tasks. One such task is disparity estimation, estimating the disparity between matching pixels in stereo image pairs, which is crucial for safety-critical applications like medical surgeries and autonomous navigation. However, DL-based disparity estimation methods are highly susceptible to distribution shifts and adversarial attacks, raising concerns about their reliability and generalization. Despite these concerns, a standardized benchmark for evaluating the robustness of disparity estimation methods remains absent, hindering progress in the field. To address this gap, we introduce DispBench, a comprehensive benchmarking tool for systematically assessing the reliability of disparity estimation methods. DispBench evaluates robustness against synthetic image corruptions such as adversarial attacks and out-of-distribution shifts caused by 2D Common Corruptions across multiple datasets and diverse corruption scenarios. We conduct the most extensive performance and robustness analysis of disparity estimation methods to date, uncovering key correlations between accuracy, reliability, and generalization. Open-source code for DispBench: https://github.com/shashankskagnihotri/benchmarking_robustness/tree/disparity_estimation/final/disparity_estimation
format Preprint
id arxiv_https___arxiv_org_abs_2505_05091
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle DispBench: Benchmarking Disparity Estimation to Synthetic Corruptions
Agnihotri, Shashank
Ansari, Amaan
Dackermann, Annika
Rösch, Fabian
Keuper, Margret
Computer Vision and Pattern Recognition
Machine Learning
Deep learning (DL) has surpassed human performance on standard benchmarks, driving its widespread adoption in computer vision tasks. One such task is disparity estimation, estimating the disparity between matching pixels in stereo image pairs, which is crucial for safety-critical applications like medical surgeries and autonomous navigation. However, DL-based disparity estimation methods are highly susceptible to distribution shifts and adversarial attacks, raising concerns about their reliability and generalization. Despite these concerns, a standardized benchmark for evaluating the robustness of disparity estimation methods remains absent, hindering progress in the field. To address this gap, we introduce DispBench, a comprehensive benchmarking tool for systematically assessing the reliability of disparity estimation methods. DispBench evaluates robustness against synthetic image corruptions such as adversarial attacks and out-of-distribution shifts caused by 2D Common Corruptions across multiple datasets and diverse corruption scenarios. We conduct the most extensive performance and robustness analysis of disparity estimation methods to date, uncovering key correlations between accuracy, reliability, and generalization. Open-source code for DispBench: https://github.com/shashankskagnihotri/benchmarking_robustness/tree/disparity_estimation/final/disparity_estimation
title DispBench: Benchmarking Disparity Estimation to Synthetic Corruptions
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2505.05091