Review: CONDITIONAL NETWORKS
FOR FEW-SHOT SEMANTIC SEGMENTATION
1. Introduction
- This paper proposed co-FCN network which make conditioning branch contain few-shot annotations. Samples for few-shot learning is selected from segmentation datset.
2. Conditional Architecture and Few-Shot Optimization
- Few-shot segmentation is required to learn to segment new input with a few annotations.
- In this paper, proposed model based on FCN and it align few shot trainng and testing paradigms.
- Figure 1 shows overall structure of co-FCN. The segmentation branch is a FCN that segments the query. The conditioning branch takes support sets as input and makes features which are fused with query image.
4. Discussion
- The proposed model is much faster then tranditional model, because it doesn't need any optimization at test time. Additionally, it is good to cope with sparse annotations.
Reference
- CONDITIONAL NETWORKS FOR FEW-SHOT SEMANTIC SEGMENTATION