Feature warping is a core technique in optical flow estimation; however, the ambiguity caused by occluded areas during warping is a major problem that remains unsolved. In this paper, we propose an asymmetric occlusion-aware feature matching module, which can learn a rough occlusion mask that filters useless (occluded) areas immediately after feature warping without any explicit supervision. The proposed module can be easily integrated into end-to-end network architectures and enjoys performance gains while introducing negligible computational cost. The learned occlusion mask can be further fed into a subsequent network cascade with dual feature pyramids with which we achieve state-of-the-art performance. At the time of submission, our method, called MaskFlownet, surpasses all published optical flow methods on the MPI Sintel, KITTI 2012 and 2015 benchmarks. Code is available at https://github.com/microsoft/MaskFlownet.
翻译:功能扭曲是光学流估计中的核心技术;然而,在扭曲过程中,隐蔽区域造成的模糊性是一个尚未解决的主要问题。我们在本文件中建议采用不对称的封闭性(clocion-aware)特征匹配模块,该模块可以学习粗略的封闭性遮罩,在特征扭曲后立即过滤无效(cloced)区域,而没有明确的监督。拟议的模块可以很容易地融入端至端网络结构,并在引入微不足道的计算成本的同时享有性能收益。学到的封闭性遮罩可以进一步装入随后的网络级联,其具有双重特征的金字塔,从而实现我们最先进的性能。在提交时,我们的方法称为MaskFlownet,超越了MPI Sintel、KITTI 2012和2015年基准上公布的所有光学流方法。代码可在https://github.com/microclosoft/MaskFlownet查阅。