Optical flow estimation is a classical yet challenging task in computer vision. One of the essential factors in accurately predicting optical flow is to alleviate occlusions between frames. However, it is still a thorny problem for current top-performing optical flow estimation methods due to insufficient local evidence to model occluded areas. In this paper, we propose the Super Kernel Flow Network (SKFlow), a CNN architecture to ameliorate the impacts of occlusions on optical flow estimation. SKFlow benefits from the super kernels which bring enlarged receptive fields to complement the absent matching information and recover the occluded motions. We present efficient super kernel designs by utilizing conical connections and hybrid depth-wise convolutions. Extensive experiments demonstrate the effectiveness of SKFlow on multiple benchmarks, especially in the occluded areas. Without pre-trained backbones on ImageNet and with a modest increase in computation, SKFlow achieves compelling performance and ranks $\textbf{1st}$ among currently published methods on the Sintel benchmark. On the challenging Sintel clean and final passes (test), SKFlow surpasses the best-published result in the unmatched areas ($7.96$ and $12.50$) by $9.09\%$ and $7.92\%$. The code is available at \href{https://github.com/littlespray/SKFlow}{https://github.com/littlespray/SKFlow}.
翻译:光学流动估算是计算机视觉中一个典型但具有挑战性的任务。准确预测光学流动的基本因素之一,是减轻框架之间的隔阂。然而,由于当地对隐蔽区域模型的证据不足,目前最佳光学流动估算方法仍是一个棘手的问题。在本文中,我们提议建立超级内核流估算(SKFlow),这是一个有线电视新闻网架构,以缓解光学流量估算的封闭性影响。超级内核带来了扩大的可容纳域的效益,以补充缺失的匹配信息并恢复隐蔽的动作。我们通过使用锥形连接和混合式深度连接来展示高效的超级内核设计。广泛的实验表明SKFlow在多个基准上的有效性,特别是在隐蔽区域。在图像网络上没有经过预先训练的骨架,而且计算量也略有增加,SKFlow在Sintel基准上取得了令人信服的业绩,在目前公布的Sintel基准中排名为$textbf{1美元。在Sintel清洁和最终传递(Test)$)、SKFlow\rus/Smaryal $9/Smary_Krmaxes.