Knowledge-Embedded Representation Learning for Fine-Grained Image Recognition

2 Jul 2018Tianshui ChenLiang LinRiquan ChenYang WuXiaonan Luo

Humans can naturally understand an image in depth with the aid of rich knowledge accumulated from daily lives or professions. For example, to achieve fine-grained image recognition (e.g., categorizing hundreds of subordinate categories of birds) usually requires a comprehensive visual concept organization including category labels and part-level attributes... (read more)

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