In many domains, lack of data inhibits adoption of advanced machine learning models. Recently, Few-ShotLearning (FSL) has been actively studied to tackle this problem. Utilizing prior knowledge obtained throughobservations on related domains, FSL achi...
In many domains, lack of data inhibits adoption of advanced machine learning models. Recently, Few-ShotLearning (FSL) has been actively studied to tackle this problem. Utilizing prior knowledge obtained throughobservations on related domains, FSL achieved significant performance with only a few samples. In this paper, wepresent a survey on FSL in terms of data augmentation, embedding and metric learning, and meta-learning. Inaddition to interesting researches, we also introduce major benchmark datasets. FSL is widely adopted in variousdomains, but we focus on image analysis in this paper.