Learning Multi-Subset of Classes for Fine-Grained Food Recognition

Javier Ródenas, Bhalaji Nagarajan, Marc Bolaños, P. Radeva
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引用次数: 6

Abstract

Food image recognition is a complex computer vision task, because of the large number of fine-grained food classes. Fine-grained recognition tasks focus on learning subtle discriminative details to distinguish similar classes. In this paper, we introduce a new method to improve the classification of classes that are more difficult to discriminate based on Multi-Subsets learning. Using a pre-trained network, we organize classes in multiple subsets using a clustering technique. Later, we embed these subsets in a multi-head model structure. This structure has three distinguishable parts. First, we use several shared blocks to learn the generalized representation of the data. Second, we use multiple specialized blocks focusing on specific subsets that are difficult to distinguish. Lastly, we use a fully connected layer to weight the different subsets in an end-to-end manner by combining the neuron outputs. We validated our proposed method using two recent state-of-the-art vision transformers on three public food recognition datasets. Our method was successful in learning the confused classes better and we outperformed the state-of-the-art on the three datasets.
学习类的多子集用于细粒度食物识别
食物图像识别是一项复杂的计算机视觉任务,因为有大量的细粒度食物类别。细粒度识别任务侧重于学习细微的判别细节来区分相似的类。本文提出了一种新的基于多子集学习的方法来改进难以区分的类的分类。使用预训练的网络,我们使用聚类技术将类组织在多个子集中。随后,我们将这些子集嵌入到一个多头模型结构中。这个结构有三个可区分的部分。首先,我们使用几个共享块来学习数据的广义表示。其次,我们使用多个专门的块来关注难以区分的特定子集。最后,通过结合神经元输出,我们使用一个完全连接层以端到端方式对不同子集进行加权。我们使用两个最新的最先进的视觉变压器在三个公共食品识别数据集上验证了我们提出的方法。我们的方法在更好地学习困惑类方面取得了成功,并且在三个数据集上的表现优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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