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Hyper-class augmented and regularized deep learning for fine-grained image classification

机译:超级增强和正常化深度学习细粒度图像分类

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Deep convolutional neural networks (CNN) have seen tremendous success in large-scale generic object recognition. In comparison with generic object recognition, fine-grained image classification (FGIC) is much more challenging because (i) fine-grained labeled data is much more expensive to acquire (usually requiring domain expertise); (ii) there exists large intra-class and small inter-class variance. Most recent work exploiting deep CNN for image recognition with small training data adopts a simple strategy: pre-train a deep CNN on a large-scale external dataset (e.g., ImageNet) and fine-tune on the small-scale target data to fit the specific classification task. In this paper, beyond the fine-tuning strategy, we propose a systematic framework of learning a deep CNN that addresses the challenges from two new perspectives: (i) identifying easily annotated hyper-classes inherent in the fine-grained data and acquiring a large number of hyper-class-labeled images from readily available external sources (e.g., image search engines), and formulating the problem into multitask learning; (ii) a novel learning model by exploiting a regularization between the fine-grained recognition model and the hyper-class recognition model. We demonstrate the success of the proposed framework on two small-scale fine-grained datasets (Stanford Dogs and Stanford Cars) and on a large-scale car dataset that we collected.
机译:深度卷积神经网络(CNN)在大规模的通用对象识别中已经看到了巨大的成功。与通用物体识别相比,细粒度的图像分类(FGIC)更具挑战性,因为(i)细粒度标记数据可以获得更昂贵(通常需要域专业知识); (ii)存在大的内部内部和阶级间的阶级方差。利用小型训练数据的图像识别深入CNN的最新工作采用简单的策略:在大规模外部数据集(例如,想象成)和微调上的小规模目标数据上预先列车在大规模的外部数据集(Imagenet)和微调上进行缩小的策略以适应具体分类任务。在本文中,除了微调策略之外,我们提出了一个系统的框架,学习了一个深入的CNN,解决了两个新观点的挑战:(i)识别细粒度数据中固有的容易注释的超类和获取大型来自易于使用的外部源(例如,图像搜索引擎)的超类标记图像数量,并将问题列入多任务学习; (ii)通过利用细粒度识别模型与超级识别模型之间的正则化进行新颖的学习模型。我们展示了在两个小型细粒度数据集(斯坦福狗和斯坦福汽车)和我们收集的大型汽车数据集上的提出框架的成功。

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