Attribute Mix: Semantic Data Augmentation for Fine Grained Recognition

6 Apr 2020  ·  Hao Li, Xiaopeng Zhang, Hongkai Xiong, Qi Tian ·

Collecting fine-grained labels usually requires expert-level domain knowledge and is prohibitive to scale up. In this paper, we propose Attribute Mix, a data augmentation strategy at attribute level to expand the fine-grained samples. The principle lies in that attribute features are shared among fine-grained sub-categories, and can be seamlessly transferred among images. Toward this goal, we propose an automatic attribute mining approach to discover attributes that belong to the same super-category, and Attribute Mix is operated by mixing semantically meaningful attribute features from two images. Attribute Mix is a simple but effective data augmentation strategy that can significantly improve the recognition performance without increasing the inference budgets. Furthermore, since attributes can be shared among images from the same super-category, we further enrich the training samples with attribute level labels using images from the generic domain. Experiments on widely used fine-grained benchmarks demonstrate the effectiveness of our proposed method.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Fine-Grained Image Classification CUB-200-2011 Mix+ Accuracy 90.2% # 22
Fine-Grained Image Classification FGVC Aircraft Mix+ Accuracy 93.1% # 26
Fine-Grained Image Classification Stanford Cars Attribute Mix+ Accuracy 94.9% # 23

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