cs.AI updates on arXiv.org 07月25日 12:28
Distributional Uncertainty for Out-of-Distribution Detection
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本文提出一种名为Free-Energy后验网络的新框架,用于从深度神经网络中估计不确定性以检测OoD样本。该方法结合分布不确定性模型和自由能,实现更精细的不确定性估计,并通过与RPL框架结合,提高了检测效率和语义意义。

arXiv:2507.18106v1 Announce Type: cross Abstract: Estimating uncertainty from deep neural networks is a widely used approach for detecting out-of-distribution (OoD) samples, which typically exhibit high predictive uncertainty. However, conventional methods such as Monte Carlo (MC) Dropout often focus solely on either model or data uncertainty, failing to align with the semantic objective of OoD detection. To address this, we propose the Free-Energy Posterior Network, a novel framework that jointly models distributional uncertainty and identifying OoD and misclassified regions using free energy. Our method introduces two key contributions: (1) a free-energy-based density estimator parameterized by a Beta distribution, which enables fine-grained uncertainty estimation near ambiguous or unseen regions; and (2) a loss integrated within a posterior network, allowing direct uncertainty estimation from learned parameters without requiring stochastic sampling. By integrating our approach with the residual prediction branch (RPL) framework, the proposed method goes beyond post-hoc energy thresholding and enables the network to learn OoD regions by leveraging the variance of the Beta distribution, resulting in a semantically meaningful and computationally efficient solution for uncertainty-aware segmentation. We validate the effectiveness of our method on challenging real-world benchmarks, including Fishyscapes, RoadAnomaly, and Segment-Me-If-You-Can.

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深度学习 不确定性估计 OoD检测 自由能模型 后验网络
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