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Iterative object and part transfer for fine-grained recognition

机译:迭代对象和零件传递以实现细粒度识别

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The aim of fine-grained recognition is to identify sub-ordinate categories in images like different species of birds. Existing works have confirmed that, in order to capture the subtle differences across the categories, automatic localization of objects and parts is critical. Most approaches for object and part localization rehed on the bottom-up pipeline, where thousands of region proposals are generated and then filtered by pre-trained object/part models. This is computationally expensive and not scalable once the number of objects/parts becomes large. In this paper, we propose a nonparametric data-driven method for object and part localization. Given an unlabeled test image, our approach transfers annotations from a few similar images retrieved in the training set. In particular, we propose an iterative transfer strategy that gradually refine the predicted bounding boxes. Based on the located objects and parts, deep convolutional features are extracted for recognition. We evaluate our approach on the widely-used CUB200-2011 dataset and a new and large dataset called Birdsnap. On both datasets, we achieve better results than many state-of-the-art approaches, including a few using oracle (manually annotated) bounding boxes in the test images.
机译:细粒度识别的目的是识别图像中的次级类别,例如不同种类的鸟类。现有工作已确认,为了捕获类别之间的细微差异,自动定位对象和零件至关重要。大多数用于对象和零件定位的方法都依赖于自下而上的管道,其中生成了数千个区域建议,然后通过预先训练的对象/零件模型进行过滤。一旦对象/零件的数量变大,这在计算上是昂贵的并且是不可伸缩的。在本文中,我们提出了一种用于对象和零件定位的非参数数据驱动方法。给定一个未标记的测试图像,我们的方法将从训练集中检索到的一些相似图像中转移注释。特别是,我们提出了一种迭代转移策略,该策略逐渐完善了预测的边界框。基于所定位的对象和零件,提取深度卷积特征以进行识别。我们在广泛使用的CUB200-2011数据集和一个称为Birdsnap的新的大型数据集上评估我们的方法。在这两个数据集上,我们都比许多最新方法获得更好的结果,包括在测试图像中使用oracle(手动注释)边界框的一些方法。

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