Moving Object Segmentation in Jittery Videos by Stabilizing Trajectories Modeled in Kendall's Shape Space
Geethu Miriam Jacob, Sukhendu Das

TL;DR
This paper introduces a novel method for moving object segmentation in jittery videos by stabilizing trajectories in Kendall's shape space, effectively handling non-smooth camera motions to improve segmentation accuracy.
Contribution
The work presents a new approach combining Procrustes analysis, trajectory stabilization, and energy minimization in Kendall's shape space for jittery video segmentation, which outperforms existing methods.
Findings
Effective segmentation in jittery videos demonstrated on real-world dataset
Superior performance shown through qualitative and quantitative results
Robustness tested with artificially jittered videos on SegTrack2
Abstract
Moving Object Segmentation is a challenging task for jittery/wobbly videos. For jittery videos, the non-smooth camera motion makes discrimination between foreground objects and background layers hard to solve. While most recent works for moving video object segmentation fail in this scenario, our method generates an accurate segmentation of a single moving object. The proposed method performs a sparse segmentation, where frame-wise labels are assigned only to trajectory coordinates, followed by the pixel-wise labeling of frames. The sparse segmentation involving stabilization and clustering of trajectories in a 3-stage iterative process. At the 1st stage, the trajectories are clustered using pairwise Procrustes distance as a cue for creating an affinity matrix. The 2nd stage performs a block-wise Procrustes analysis of the trajectories and estimates Frechet means (in Kendall's shape…
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Taxonomy
TopicsImage and Video Stabilization · Advanced Image and Video Retrieval Techniques · Biometric Identification and Security
