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

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.

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Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Fine-Grained Image Classification Food-101 VOLO-D5 Accuracy 93.66 # 7
Fine-Grained Image Classification Food-101 CSWin-L Accuracy 93.81 # 5
Fine-Grained Image Classification FoodX-251 CSWin-L Accuracy (%) 79.90 # 1
Fine-Grained Image Classification FoodX-251 VOLO-D5 Accuracy (%) 79.15 # 2

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