SSSC-AM: A Unified Framework for Video Co-Segmentation by Structured Sparse Subspace Clustering with Appearance and Motion Features
Junlin Yao, Frank Nielsen

TL;DR
This paper introduces a unified video co-segmentation framework that combines appearance and motion features using structured sparse subspace clustering, improving segmentation accuracy and robustness in challenging scenarios.
Contribution
The authors propose a novel integrated framework based on structured sparse subspace clustering with enhancements for motion feature detectability and affine subspace constraints.
Findings
Achieves highest performance on MOViCS dataset
Demonstrates robustness to heavy noise
Provides more consistent segmentation results
Abstract
Video co-segmentation refers to the task of jointly segmenting common objects appearing in a given group of videos. In practice, high-dimensional data such as videos can be conceptually thought as being drawn from a union of subspaces corresponding to categories rather than from a smooth manifold. Therefore, segmenting data into respective subspaces --- subspace clustering --- finds widespread applications in computer vision, including co-segmentation. State-of-the-art methods via subspace clustering seek to solve the problem in two steps: First, an affinity matrix is built from data, with appearance features or motion patterns. Second, the data are segmented by applying spectral clustering to the affinity matrix. However, this process is insufficient to obtain an optimal solution since it does not take into account the {\em interdependence} of the affinity matrix with the…
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