Authors
Hongsheng Wang, Xiaoqi Zhao, Youwei Pang, Jinqing Qi
Publication date
2022/10/14
Book
Chinese Conference on Pattern Recognition and Computer Vision (PRCV)
Pages
287-298
Publisher
Springer Nature Switzerland
Description
Prototype learning and decoder construction are the keys for few-shot segmentation. However, existing methods use only a single prototype generation mode, which can not cope with the intractable problem of objects with various scales. Moreover, the one-way forward propagation adopted by previous methods may cause information dilution from registered features during the decoding process. In this research, we propose a rich prototype generation module (RPGM) and a recurrent prediction enhancement module (RPEM) to reinforce the prototype learning paradigm and build a unified memory-augmented decoder for few-shot segmentation, respectively. Specifically, the RPGM combines superpixel and K-means clustering to generate rich prototype features with complementary scale relationships and adapt the scale gap between support and query images. The RPEM utilizes the recurrent mechanism to design a …
Total citations
2023202411
Scholar articles
H Wang, X Zhao, Y Pang, J Qi - Chinese Conference on Pattern Recognition and …, 2022