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MFT: Long-Term Tracking of Every Pixel

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arxiv 2305.12998 v2 pith:7SIG6QLD submitted 2023-05-22 cs.CV

MFT: Long-Term Tracking of Every Pixel

classification cs.CV
keywords trackingdenseflowsframeslong-termmethodaccuracyachieves
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose MFT -- Multi-Flow dense Tracker -- a novel method for dense, pixel-level, long-term tracking. The approach exploits optical flows estimated not only between consecutive frames, but also for pairs of frames at logarithmically spaced intervals. It selects the most reliable sequence of flows on the basis of estimates of its geometric accuracy and the probability of occlusion, both provided by a pre-trained CNN. We show that MFT achieves competitive performance on the TAP-Vid benchmark, outperforming baselines by a significant margin, and tracking densely orders of magnitude faster than the state-of-the-art point-tracking methods. The method is insensitive to medium-length occlusions and it is robustified by estimating flow with respect to the reference frame, which reduces drift.

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