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A Causal Framework for Aligning Image Quality Metrics and Deep Neural Network Robustness
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本文提出了一种新的图像质量评估方法,通过因果框架开发出与深度神经网络性能高度相关的指标,以更有效地评估大型图像数据集的质量。

arXiv:2503.02797v2 Announce Type: replace-cross Abstract: Image quality plays an important role in the performance of deep neural networks (DNNs) that have been widely shown to exhibit sensitivity to changes in imaging conditions. Conventional image quality assessment (IQA) seeks to measure and align quality relative to human perceptual judgments, but we often need a metric that is not only sensitive to imaging conditions but also well-aligned with DNN sensitivities. We first ask whether conventional IQA metrics are also informative of DNN performance. We show theoretically and empirically that conventional IQA metrics are weak predictors of DNN performance for image classification. Using our causal framework, we then develop metrics that exhibit strong correlation with DNN performance, thus enabling us to effectively estimate the quality distribution of large image datasets relative to targeted vision tasks.

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深度神经网络 图像质量评估 因果框架 性能指标 图像数据集
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