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Pooling-Based Feature Extraction and Coarse-to-fine Patch Matching for Optical Flow Estimation

机译:基于池的特征提取和粗细匹配匹配,用于光流估计

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This paper presents a pooling-based hierarchical model to extract a dense matching set for optical flow estimation. 'The proposed model down-samples basic image features (gradient and colour) with min and max pooling, to maintain distinctive visual features from the original resolution to the highly down-sampled layers. Subsequently, patch descriptors are extracted from the pooling results for coarse-tonne patch matching. In the matching process, the local optimum correspondence of patches is found with a four-step search, and then refined by a velocity propagation algorithm. This paper also presents a method to detect matching outliers by checking the consistency of motion-based and colour-based segmentation. We evaluate the proposed method on two benchmarks, MPI-Sintel and Kitti-2015, using two criteria: the matching accuracy and the accuracy of the resulting optical flow estimation. The results indicate that the proposed method is more efficient, produces more matches than the existing algorithms, and improves significantly the accuracy of optical flow estimation.
机译:本文提出了一种基于池的分层模型,以提取用于光流估计的密集匹配集。 ``建议的模型使用最小和最大合并量对基本图像特征(渐变和彩色)进行下采样,以保持从原始分辨率到高度下采样层的独特视觉特征。随后,从合并结果中提取补丁描述符,以进行粗调补丁匹配。在匹配过程中,通过四步搜索找到补丁的局部最优对应关系,然后通过速度传播算法进行优化。本文还提出了一种通过检查基于运动的分割和基于颜色的分割的一致性来检测匹配异常值的方法。我们使用两个标准在两个基准(MPI-Sintel和Kitti-2015)上评估所提出的方法:匹配精度和所得光流估计的精度。结果表明,与现有算法相比,该方法效率更高,匹配次数更多,并且大大提高了光流估计的准确性。

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