论文标题
ANL:跨域患者的反噪声学习重新识别
ANL: Anti-Noise Learning for Cross-Domain Person Re-Identification
论文作者
论文摘要
由于缺乏标签和领域的多样性,在跨域环境中研究人员重新识别是一个挑战。一种令人钦佩的方法是通过通过聚类为未标记的样本分配伪标签来优化目标模型。通常,归因于域间隙,预训练的源域模型不能提取适当的目标域特征,这将极大地影响聚类性能和伪标签的准确性。毫无疑问,广泛的标签噪声将导致次优的解决方案。为了解决这些问题,我们提出了一种反噪声学习(ANL)方法,其中包含两个模块。特征分布对齐(FDA)模块旨在通过摄像机的对比度学习和对抗性适应来收集与ID相关的样品和分散与ID无关的样品。创建一个友好的交叉基础,用于降低聚类噪声。此外,可靠的样本选择(RSS)模块使用辅助模型来校正嘈杂的标签,并为主模型选择可靠的样品。为了有效利用集群算法和RSS模块生成的离群信息,我们在实例级别训练这些样本。实验表明,与最先进的方法相比,我们提出的ANL框架可以有效地减少域冲突,减轻嘈杂样本的影响以及卓越的性能。
Due to the lack of labels and the domain diversities, it is a challenge to study person re-identification in the cross-domain setting. An admirable method is to optimize the target model by assigning pseudo-labels for unlabeled samples through clustering. Usually, attributed to the domain gaps, the pre-trained source domain model cannot extract appropriate target domain features, which will dramatically affect the clustering performance and the accuracy of pseudo-labels. Extensive label noise will lead to sub-optimal solutions doubtlessly. To solve these problems, we propose an Anti-Noise Learning (ANL) approach, which contains two modules. The Feature Distribution Alignment (FDA) module is designed to gather the id-related samples and disperse id-unrelated samples, through the camera-wise contrastive learning and adversarial adaptation. Creating a friendly cross-feature foundation for clustering that is to reduce clustering noise. Besides, the Reliable Sample Selection (RSS) module utilizes an Auxiliary Model to correct noisy labels and select reliable samples for the Main Model. In order to effectively utilize the outlier information generated by the clustering algorithm and RSS module, we train these samples at the instance-level. The experiments demonstrate that our proposed ANL framework can effectively reduce the domain conflicts and alleviate the influence of noisy samples, as well as superior performance compared with the state-of-the-art methods.