Few-shot segmentation aims to devise a generalizing model that segments query images from unseen classes during training with the guidance of a few support images whose class tally with the class of the query. There exist two domain-specific problems mentioned in the previous works, namely spatial inconsistency and bias towards seen classes. Taking the former problem into account, our method compares the support feature map with the query feature map at multi scales to become scale-agnostic. As a solution to the latter problem, a supervised model, called as base learner, is trained on available classes to accurately identify pixels belonging to seen classes. Hence, subsequent meta learner has a chance to discard areas belonging to seen classes with the help of an ensemble learning model that coordinates meta learner with the base learner. We simultaneously address these two vital problems for the first time and achieve state-of-the-art performances on both PASCAL-5i and COCO-20i datasets.
翻译:微小截分法旨在设计一个通用模型,在培训期间,在一些辅助图像的指导下,分段查询来自无形课程的图像,这些图像的等级与查询的类别相符。在以往的著作中,有两种领域特有的问题,即空间不一致和偏向被观察班级。考虑到前一个问题,我们的方法是将支持特征地图与多尺度的查询特征地图进行比较,使之成为规模级的不可知性。作为解决后一个问题的一种办法,一个被称为基础学习者的监督模型,在现有的课程上接受培训,以准确识别属于被观察班级的像素。因此,随后的元学习者有机会借助一个混合学习模型,将属于观察班级的地区丢弃,该模型将元学习者与基础学习者相协调。我们同时首次解决这两个关键问题,并在PACAL-5i和CO-20i数据集上实现最新技术表现。