Le T Hoang Ngan, Quach Kha Gia, Luu Khoa, Duong Chi Nhan, Savvides Marios
IEEE Trans Image Process. 2018 Jan 15. doi: 10.1109/TIP.2018.2794205.
Variational Level Set (LS) has been a widely used method in medical segmentation. However, it is limited when dealing with multi-instance objects in the real world. In addition, its segmentation results are quite sensitive to initial settings and highly depend on the number of iterations. To address these issues and boost the classic variational LS methods to a new level of the learnable deep learning approaches, we propose a novel definition of contour evolution named Recurrent Level Set (RLS) 1 to employ Gated Recurrent Unit under the energy minimization of a variational LS functional. The curve deformation process in RLS is formed as a hidden state evolution procedure and updated by minimizing an energy functional composed of fitting forces and contour length. By sharing the convolutional features in a fully end-to-end trainable framework, we extend RLS to Contextual RLS (CRLS) to address semantic segmentation in the wild. The experimental results have shown that our proposed RLS improves both computational time and segmentation accuracy against the classic variational LS-based method whereas the fully end-to-end system CRLS achieves competitive performance compared to the state-of-the-art semantic segmentation approaches.
变分水平集(LS)在医学分割中一直是一种广泛使用的方法。然而,在处理现实世界中的多实例对象时它存在局限性。此外,其分割结果对初始设置相当敏感,并且高度依赖于迭代次数。为了解决这些问题并将经典的变分LS方法提升到可学习的深度学习方法的新水平,我们提出了一种名为循环水平集(RLS)1的轮廓演化新定义,以便在变分LS泛函的能量最小化下采用门控循环单元。RLS中的曲线变形过程形成为一个隐藏状态演化过程,并通过最小化由拟合力和轮廓长度组成的能量泛函来更新。通过在完全端到端可训练框架中共享卷积特征,我们将RLS扩展为上下文RLS(CRLS)以处理自然场景中的语义分割。实验结果表明,与基于经典变分LS的方法相比,我们提出的RLS在计算时间和分割精度方面都有改进,而完全端到端系统CRLS与最先进的语义分割方法相比具有竞争力。