Optical flow estimation is an essential step for many real-world computer vision tasks. Existing deep networks have achieved satisfactory results by mostly employing a pyramidal coarse-to-fine paradigm, where a key process is to adopt warped target feature based on previous flow prediction to correlate with source feature for building 3D matching cost volume. However, the warping operation can lead to troublesome ghosting problem that results in ambiguity. Moreover, occluded areas are treated equally with non occluded regions in most existing works, which may cause performance degradation. To deal with these challenges, we propose a lightweight yet efficient optical flow network, named OAS-Net (occlusion aware sampling network) for accurate optical flow. First, a new sampling based correlation layer is employed without noisy warping operation. Second, a novel occlusion aware module is presented to make raw cost volume conscious of occluded regions. Third, a shared flow and occlusion awareness decoder is adopted for structure compactness. Experiments on Sintel and KITTI datasets demonstrate the effectiveness of proposed approaches.
翻译:现有深层网络取得了令人满意的结果,主要采用金字塔式粗粗到软模式,其中关键程序是采用基于先前流量预测的扭曲目标特征,与3D匹配成本体积的建筑源特性相联系;然而,扭曲操作可能导致麻烦的鬼魂问题,造成模糊不清;此外,在大多数现有工程中,隐蔽地区与非隐蔽地区受到同等对待,可能导致性能退化;为应对这些挑战,我们提议建立一个轻量但有效的光学流网络,称为OAS-Net(有意识的取样网络),以准确的光学流动;首先,采用基于新取样的关联层,而不进行吵闹动作;第二,采用新的隐蔽意识模块,使原始成本量意识到隐蔽地区;第三,在结构紧凑方面采用共同的流和封闭意识解密。Sintel和KITTI数据集实验显示了拟议方法的有效性。