Eigencontours: Novel Contour Descriptors Based on Low-Rank Approximation
About
Novel contour descriptors, called eigencontours, based on low-rank approximation are proposed in this paper. First, we construct a contour matrix containing all object boundaries in a training set. Second, we decompose the contour matrix into eigencontours via the best rank-M approximation. Third, we represent an object boundary by a linear combination of the M eigencontours. We also incorporate the eigencontours into an instance segmentation framework. Experimental results demonstrate that the proposed eigencontours can represent object boundaries more effectively and more efficiently than existing descriptors in a low-dimensional space. Furthermore, the proposed algorithm yields meaningful performances on instance segmentation datasets.
Wonhui Park, Dongkwon Jin, Chang-Su Kim• 2022
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Instance Segmentation | SBD (val) | AP@0.50 (Mask)56.5 | 22 | |
| Boundary Reconstruction | KINS | AUC-F89.17 | 3 | |
| Boundary Reconstruction | SBD | AUC-F86.51 | 3 | |
| Boundary Reconstruction | COCO 2017 | AUC-F76.92 | 3 |
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