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Fine-Grained Image Classification by Exploring Bipartite-Graph Labels

机译:通过研究二部图标签进行细粒度图像分类

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Given a food image, can a fine-grained object recognition engine tell "which restaurant which dish" the food belongs to? Such ultra-fine grained image recognition is the key for many applications like search by images, but it is very challenging because it needs to discern subtle difference between classes while dealing with the scarcity of training data. Fortunately, the ultra-fine granularity naturally brings rich relationships among object classes. This paper proposes a novel approach to exploit the rich relationships through bipartite-graph labels (BGL). We show how to model BGL in an overall convolutional neural networks and the resulting system can be optimized through back-propagation. We also show that it is computationally efficient in inference thanks to the bipartite structure. To facilitate the study, we construct a new food benchmark dataset, which consists of 37,885 food images collected from 6 restaurants and totally 975 menus. Experimental results on this new food and three other datasets demonstrate BGL advances previous works in fine-grained object recognition. An online demo is available at http: //www.f-zhou.com/fg_demo/.
机译:给定食物图像,细粒度的对象识别引擎能否分辨出食物所属的“哪家餐馆是哪家菜”?这种超细颗粒图像识别是许多应用程序(例如,按图像搜索)的关键,但是它非常具有挑战性,因为它需要在处理训练数据的稀缺性的同时辨别类别之间的细微差别。幸运的是,超细粒度自然会在对象类之间带来丰富的关系。本文提出了一种通过二部图标签(BGL)利用丰富关系的新颖方法。我们展示了如何在整体卷积神经网络中对BGL进行建模,并且可以通过反向传播对生成的系统进行优化。我们还表明,由于具有二分法结构,它在计算上是有效的。为了促进研究,我们构建了一个新的食品基准数据集,其中包含从6家餐厅收集的37,885张食品图像和975个菜单。在这种新食品和其他三个数据集上的实验结果表明,BGL在细粒物体识别方面取得了先驱。在线演示可从http://www.f-zhou.com/fg_demo/获得。

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