학술논문

Dense Matchers for Dense Tracking
Document Type
Working Paper
Source
Proceedings of the 27th Computer Vision Winter Workshop. Ljubljana: Slovenian Pattern Recognition Society, 2024. p. 18-28
Subject
Computer Science - Computer Vision and Pattern Recognition
Language
Abstract
Optical flow is a useful input for various applications, including 3D reconstruction, pose estimation, tracking, and structure-from-motion. Despite its utility, the field of dense long-term tracking, especially over wide baselines, has not been extensively explored. This paper extends the concept of combining multiple optical flows over logarithmically spaced intervals as proposed by MFT. We demonstrate the compatibility of MFT with different optical flow networks, yielding results that surpass their individual performance. Moreover, we present a simple yet effective combination of these networks within the MFT framework. This approach proves to be competitive with more sophisticated, non-causal methods in terms of position prediction accuracy, highlighting the potential of MFT in enhancing long-term tracking applications.