论文标题
基于数据驱动的元设置的细粒视觉分类
Data-driven Meta-set Based Fine-Grained Visual Classification
论文作者
论文摘要
构建细颗粒的图像数据集通常需要特定于领域的专家知识,这并不总是可用于人群平台注释。因此,直接从Web图像学习成为细粒视觉识别的替代方法。但是,网络训练集中的标签噪声会严重降低模型性能。为此,我们提出了一种基于数据驱动的元设置的方法来处理嘈杂的Web图像以进行细粒度识别。具体而言,在少量干净的元设备的指导下,我们以元学习方式训练选择网,以区分分布式噪声图像。为了进一步提高模型的鲁棒性,我们还学习了一个标签网,以纠正分布噪声数据的标签。这样,我们提出的方法可以减轻分布外噪声造成的有害影响,并适当利用分发噪音样本进行培训。在三个常用的细粒数据集上进行的广泛实验表明,我们的方法优于最先进的噪声刺激方法。
Constructing fine-grained image datasets typically requires domain-specific expert knowledge, which is not always available for crowd-sourcing platform annotators. Accordingly, learning directly from web images becomes an alternative method for fine-grained visual recognition. However, label noise in the web training set can severely degrade the model performance. To this end, we propose a data-driven meta-set based approach to deal with noisy web images for fine-grained recognition. Specifically, guided by a small amount of clean meta-set, we train a selection net in a meta-learning manner to distinguish in- and out-of-distribution noisy images. To further boost the robustness of model, we also learn a labeling net to correct the labels of in-distribution noisy data. In this way, our proposed method can alleviate the harmful effects caused by out-of-distribution noise and properly exploit the in-distribution noisy samples for training. Extensive experiments on three commonly used fine-grained datasets demonstrate that our approach is much superior to state-of-the-art noise-robust methods.