首页> 外文会议>IEEE Conference on Computer Vision and Pattern Recognition >Embedding Label Structures for Fine-Grained Feature Representation
【24h】

Embedding Label Structures for Fine-Grained Feature Representation

机译:嵌入标签结构用于细粒度特征表示

获取原文

摘要

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 finegrained 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)中的最新算法大大提高了细粒度图像分类的目的,该分类旨在区分下级类别之间的细微差异。但是,以前的研究很少集中于学习能够以不同相关度定位相似图像的细粒度和结构化特征表示,例如从相同品牌或相同模型中发现汽车,而这两者都需要高精度。在本文中,我们提出了两个主要的解决方案。 1)多任务学习框架旨在通过联合优化分类和相似性约束来有效学习细粒度的特征表示。 2)为了对多级相关性进行建模,通过概括三元组损失,将诸如层次结构或共享属性之类的标签结构无缝地嵌入到框架中。已经对三个细粒度的数据集(即斯坦福车,Car-333和食物数据集)进行了广泛而彻底的实验,这些数据集包含层次结构标签或共享属性。我们提出的方法在不使用零件时达到了非常有竞争力的性能,即在最先进的分类精度中。更重要的是,它在不同相关性级别上的图像检索性能明显优于以前的细粒度特征表示。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号