论文标题
通过不确定性学习人图像检索可靠性的预测
Reliability-Aware Prediction via Uncertainty Learning for Person Image Retrieval
论文作者
论文摘要
当前的人图像检索方法在准确度指标方面取得了巨大改进。但是,他们很少描述预测的可靠性。在本文中,我们提出了一种不确定性感知学习(UAL)方法来纠正此问题。 UAL旨在通过同时考虑数据不确定性和模型不确定性来提供可靠性感知的预测。数据不确定性捕获了样本中固有的``噪声'',而模型不确定性则描述了模型对样本预测的信心。具体而言,在UAL中,(1)我们建议一种无样式的数据不确定性学习方法,以适应性地将重量分配给训练期间的不同样本,从而在训练过程中通过模型降低了模型,以使模型含糊不清。网络的参数遵循Bernoulli分布。设置和多Query设置表明,我们的方法在香草单查询设置下的三个挑战性基准上表现出卓越的性能。
Current person image retrieval methods have achieved great improvements in accuracy metrics. However, they rarely describe the reliability of the prediction. In this paper, we propose an Uncertainty-Aware Learning (UAL) method to remedy this issue. UAL aims at providing reliability-aware predictions by considering data uncertainty and model uncertainty simultaneously. Data uncertainty captures the ``noise" inherent in the sample, while model uncertainty depicts the model's confidence in the sample's prediction. Specifically, in UAL, (1) we propose a sampling-free data uncertainty learning method to adaptively assign weights to different samples during training, down-weighting the low-quality ambiguous samples. (2) we leverage the Bayesian framework to model the model uncertainty by assuming the parameters of the network follow a Bernoulli distribution. (3) the data uncertainty and the model uncertainty are jointly learned in a unified network, and they serve as two fundamental criteria for the reliability assessment: if a probe is high-quality (low data uncertainty) and the model is confident in the prediction of the probe (low model uncertainty), the final ranking will be assessed as reliable. Experiments under the risk-controlled settings and the multi-query settings show the proposed reliability assessment is effective. Our method also shows superior performance on three challenging benchmarks under the vanilla single query settings.