CrossFlow:通过交叉匹配局部和非局部图像特征来学习光流的成本量

IF 3.1 4区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Ziyang Liu , Zimeng Liu , Xingming Wu , Weihai Chen , Zhong Liu , Zhengguo Li
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引用次数: 0

摘要

光流是两个连续视频帧之间的像素级对应。成本体积在基于深度学习的光流方法中起着重要的作用。它测量连续帧中两个像素之间的不相似性和匹配代价。广泛的光流方法围绕着成本体积。大多数现有的工作是通过计算目标图像和源图像特征之间的点积来构建代价体积,通常是通过共享卷积神经网络(CNN)来提取代价体积。然而,这些方法不能充分解决长期存在的挑战,如运动模糊和大位移。在本研究中,我们提出了CrossFlow,通过交叉匹配局部和非局部图像特征来计算成本体积。局部和非局部特征分别由CNN和变压器提取。然后,共计算出四种成本体积,并通过Softmax层自适应融合。因此,最终的成本量包含了高频和低频信息。它有助于网络从运动模糊和大位移的图像中找到正确的对应。实验结果表明,我们的光流估计方法在公开的基准sinintel和KITTI上分别比基线方法(CRAFT)高出7%和10%,表明了所提出的成本体积的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CrossFlow: Learning cost volumes for optical flow by cross-matching local and non-local image features
Optical flow is the pixel-level correspondence between two consecutive video frames. The cost volume plays an important role in deep learning-based optical flow methods. It measures the dissimilarity and the matching cost between two pixels in consecutive frames. Extensive optical flow methods have revolved around the cost volume. Most existing work constructs the cost volume by computing the dot product between the features of the target image and the source images, which is generally extracted by a shared convolutional neural network (CNN). However, these methods cannot adequately address long-standing challenges such as motion blur and large displacements. In this study, we propose the CrossFlow, computing the cost volume by cross-matching the local and non-local image features. The local and non-local features are extracted by the CNN and the transformer, respectively. Then, a total of four kinds of cost volumes are computed, and they are fused adaptively through a Softmax layer. As such, the final cost volume contains both the high- and low-frequency information. It facilitates the network in finding the correct correspondences from images with motion blur and large displacements. The experimental results demonstrate that our optical flow estimation method outperforms the baseline method (CRAFT) by 7% and 10% on the publicly available benchmarks Sintel and KITTI respectively, revealing the effectiveness of the proposed cost volume.
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来源期刊
Journal of Visual Communication and Image Representation
Journal of Visual Communication and Image Representation 工程技术-计算机:软件工程
CiteScore
5.40
自引率
11.50%
发文量
188
审稿时长
9.9 months
期刊介绍: The Journal of Visual Communication and Image Representation publishes papers on state-of-the-art visual communication and image representation, with emphasis on novel technologies and theoretical work in this multidisciplinary area of pure and applied research. The field of visual communication and image representation is considered in its broadest sense and covers both digital and analog aspects as well as processing and communication in biological visual systems.
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