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Embedding Label Structures for Fine-Grained Feature Representation

机译:嵌入标签结构进行细粒度特征表示

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Recent algorithms in convolutional neural networks (CNN) considerably advance the fine-grained image classification, which aims to differentiate subtle differences among subordinate classes. However, previous studies have rarely focused on learning a fined-grained and structured feature representation that is able to locate similar images at different levels of relevance, e.g., discovering cars from the same make or the same model, both of which require high precision. In this paper, we propose two main contributions to tackle this problem. 1) A multitask learning framework is designed to effectively learn fine-grained feature representations by jointly optimizing both classification and similarity constraints. 2) To model the multi-level relevance, label structures such as hierarchy or shared attributes are seamlessly embedded into the framework by generalizing the triplet loss. Extensive and thorough experiments have been conducted on three fine-grained datasets, i.e., the Stanford car, the Car-333, and the food datasets, which contain either hierarchical labels or shared attributes. Our proposed method has achieved very competitive performance, i.e., among state-of-the-art classification accuracy when not using parts. More importantly, it significantly outperforms previous fine-grained feature representations for image retrieval at different levels of relevance.
机译:卷积神经网络(CNN)最近的算法大大推进了细粒度的图像分类,旨在区分从属类别之间的微妙差异。然而,先前的研究很少专注于学习被罚款和结构化特征表示,该特征表示能够在不同的相关性等级地定位类似的图像,例如,从相同的制造或相同模型中发现汽车,这两者都需要高精度。在本文中,我们提出了两个主要贡献来解决这个问题。 1)多任务学习框架旨在通过共同优化分类和相似度约束来有效地学习细粒度的特征表示。 2)为了模拟多级相关性,通过概括三重态丢失,将标签结构如层次结构或共享属性无缝地嵌入到框架中。在三个细粒度的数据集,即斯坦福汽车,CAR-333和食品数据集中进行了广泛和彻底的实验,该数据集包含了分层标签或共享属性。我们所提出的方法已经实现了非常竞争力的性能,即,在不使用零件时,最先进的分类准确性。更重要的是,它显着优于以前的细粒度特征表示,用于不同的相关性的图像检索。

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