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Main Authors: Dong, Hang-Cheng, Jiang, Yuhao, Jiao, Yibo, Zou, Lu, Zheng, Kai, Liu, Bingguo, Ye, Dong, Liu, Guodong
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.19206
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author Dong, Hang-Cheng
Jiang, Yuhao
Jiao, Yibo
Zou, Lu
Zheng, Kai
Liu, Bingguo
Ye, Dong
Liu, Guodong
author_facet Dong, Hang-Cheng
Jiang, Yuhao
Jiao, Yibo
Zou, Lu
Zheng, Kai
Liu, Bingguo
Ye, Dong
Liu, Guodong
contents The deployment of AI systems in safety-critical domains, such as industrial defect inspection, autonomous driving, and medical diagnosis, is severely hampered by their lack of reliability. A single undetected erroneous prediction can lead to catastrophic outcomes. Unfortunately, there is often no alternative but to place trust in the outputs of a trained AI system, which operates without an internal safeguard to flag unreliable predictions, even in cases of high accuracy. We propose a post-hoc explanation-based indicator to detect false negatives in binary defect detection networks. To our knowledge, this is the first method to proactively identify potentially erroneous network outputs. Our core idea leverages the difference between class-specific discriminative heatmaps and class-agnostic ones. We compute the difference in their intersection over union (IoU) as a reliability score. An adversarial enhancement method is further introduced to amplify this disparity. Evaluations on two industrial defect detection benchmarks show our method effectively identifies false negatives. With adversarial enhancement, it achieves 100\% recall, albeit with a trade-off for true negatives. Our work thus advocates for a new and trustworthy deployment paradigm: data-model-explanation-output, moving beyond conventional end-to-end systems to provide critical support for reliable AI in real-world applications.
format Preprint
id arxiv_https___arxiv_org_abs_2604_19206
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle When Can We Trust Deep Neural Networks? Towards Reliable Industrial Deployment with an Interpretability Guide
Dong, Hang-Cheng
Jiang, Yuhao
Jiao, Yibo
Zou, Lu
Zheng, Kai
Liu, Bingguo
Ye, Dong
Liu, Guodong
Computer Vision and Pattern Recognition
The deployment of AI systems in safety-critical domains, such as industrial defect inspection, autonomous driving, and medical diagnosis, is severely hampered by their lack of reliability. A single undetected erroneous prediction can lead to catastrophic outcomes. Unfortunately, there is often no alternative but to place trust in the outputs of a trained AI system, which operates without an internal safeguard to flag unreliable predictions, even in cases of high accuracy. We propose a post-hoc explanation-based indicator to detect false negatives in binary defect detection networks. To our knowledge, this is the first method to proactively identify potentially erroneous network outputs. Our core idea leverages the difference between class-specific discriminative heatmaps and class-agnostic ones. We compute the difference in their intersection over union (IoU) as a reliability score. An adversarial enhancement method is further introduced to amplify this disparity. Evaluations on two industrial defect detection benchmarks show our method effectively identifies false negatives. With adversarial enhancement, it achieves 100\% recall, albeit with a trade-off for true negatives. Our work thus advocates for a new and trustworthy deployment paradigm: data-model-explanation-output, moving beyond conventional end-to-end systems to provide critical support for reliable AI in real-world applications.
title When Can We Trust Deep Neural Networks? Towards Reliable Industrial Deployment with an Interpretability Guide
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.19206