Weakly supervised image segmentation trained with image-level labels usually suffers from inaccurate coverage of object areas during the generation of the pseudo groundtruth. This is because the object activation maps are trained with the classification objective and lack the ability to generalize. To improve the generality of the objective activation maps, we propose a region prototypical network RPNet to explore the cross-image object diversity of the training set. Similar object parts across images are identified via region feature comparison. Object confidence is propagated between regions to discover new object areas while background regions are suppressed. Experiments show that the proposed method generates more complete and accurate pseudo object masks, while achieving state-of-the-art performance on PASCAL VOC 2012 and MS COCO. In addition, we investigate the robustness of the proposed method on reduced training sets.
翻译:在生成假地面真象期间,受图像标签培训的受监管不力的图像分层通常会受到目标区域覆盖不准确的影响,这是因为物体激活图经过了分类目标的培训,而且缺乏普及能力。为了提高客观启动图的普遍性,我们提议建立一个区域原型网络RPNet,以探讨训练成套图象的交叉图像多样性。通过区域特征比较,发现图像之间的类似对象部分。在背景区域受到压制时,在各区域之间传播物体信任,以发现新的物体区域。实验显示,拟议的方法产生更完整和准确的假物体面具,同时在PACAL VOC 2012和MSCO 上取得最先进的性能。此外,我们还调查了拟议减少训练组合的方法的稳健性。