Contour-based instance segmentation methods include one-stage and multi-stage schemes. These approaches achieve remarkable performance. However, they have to define plenty of points to segment precise masks, which leads to high complexity. We follow this issue and present a single-shot method, called \textbf{VeinMask}, for achieving competitive performance in low design complexity. Concretely, we observe that the leaf locates coarse margins via major veins and grows minor veins to refine twisty parts, which makes it possible to cover any objects accurately. Meanwhile, major and minor veins share the same growth mode, which avoids modeling them separately and ensures model simplicity. Considering the superiorities above, we propose VeinMask to formulate the instance segmentation problem as the simulation of the vein growth process and to predict the major and minor veins in polar coordinates. Besides, centroidness is introduced for instance segmentation tasks to help suppress low-quality instances. Furthermore, a surroundings cross-correlation sensitive (SCCS) module is designed to enhance the feature expression by utilizing the surroundings of each pixel. Additionally, a Residual IoU (R-IoU) loss is formulated to supervise the regression tasks of major and minor veins effectively. Experiments demonstrate that VeinMask performs much better than other contour-based methods in low design complexity. Particularly, our method outperforms existing one-stage contour-based methods on the COCO dataset with almost half the design complexity.
翻译:以光谱为主的分解方法包括一个阶段和多阶段的分解方法。 这些方法具有显著的性能。 但是, 它们必须确定大量分块精确面罩的多点点, 从而导致高度复杂。 我们跟踪这一问题, 并展示一个单发方法, 叫做\ textbf{VeinMask}, 以便在设计复杂性低的情况下实现竞争性性能。 具体地说, 我们观察到叶子通过主血管定位粗微的边际, 并增加细微的脉冲以精细细细细细部分, 从而有可能准确覆盖任何对象。 同时, 主和小血管共享相同的生长模式, 避免分别建模, 并确保模型简单。 考虑到上面的优越性, 我们建议 VeinMask 将实例分解问题作为静脉增长过程的模拟, 并预测极地坐标中的主要和小血管。 此外, 引入了纯度的分解任务, 来帮助抑制低质量实例。 此外, 环基岩层敏感(SCS) 模块的设计通过利用每个平面的相框来改进特征表达方式, 。 此外, 微层ILA- 演示现有系统设计方法比VI- main- main- main- main- pro- pro- mill 演示其他方法要更好进行其他方法。