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Hauptverfasser: Bahr, Lukas, Poßner, Lucas, Weise, Konstantin, Gröger, Sophie, Daub, Rüdiger
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2506.18751
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author Bahr, Lukas
Poßner, Lucas
Weise, Konstantin
Gröger, Sophie
Daub, Rüdiger
author_facet Bahr, Lukas
Poßner, Lucas
Weise, Konstantin
Gröger, Sophie
Daub, Rüdiger
contents Integrating advanced communication protocols in production has accelerated the adoption of data-driven predictive quality methods, notably machine learning (ML) models. However, ML models in image classification often face significant uncertainties arising from model, data, and domain shifts. These uncertainties lead to overconfidence in the classification model's output. To better understand these models, sensitivity analysis can help to analyze the relative influence of input parameters on the output. This work investigates the sensitivity of image classification models used for predictive quality. We propose modeling the distributional domain shifts of inputs with random variables and quantifying their impact on the model's outputs using Sobol indices computed via generalized polynomial chaos (GPC). This approach is validated through a case study involving a welding defect classification problem, utilizing a fine-tuned ResNet18 model and an emblem classification model used in BMW Group production facilities.
format Preprint
id arxiv_https___arxiv_org_abs_2506_18751
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Sensitivity analysis of image classification models using generalized polynomial chaos
Bahr, Lukas
Poßner, Lucas
Weise, Konstantin
Gröger, Sophie
Daub, Rüdiger
Machine Learning
Artificial Intelligence
Integrating advanced communication protocols in production has accelerated the adoption of data-driven predictive quality methods, notably machine learning (ML) models. However, ML models in image classification often face significant uncertainties arising from model, data, and domain shifts. These uncertainties lead to overconfidence in the classification model's output. To better understand these models, sensitivity analysis can help to analyze the relative influence of input parameters on the output. This work investigates the sensitivity of image classification models used for predictive quality. We propose modeling the distributional domain shifts of inputs with random variables and quantifying their impact on the model's outputs using Sobol indices computed via generalized polynomial chaos (GPC). This approach is validated through a case study involving a welding defect classification problem, utilizing a fine-tuned ResNet18 model and an emblem classification model used in BMW Group production facilities.
title Sensitivity analysis of image classification models using generalized polynomial chaos
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2506.18751