19 research outputs found
Permutation-invariant Feature Restructuring for Correlation-aware Image Set-based Recognition
We consider the problem of comparing the similarity of image sets with
variable-quantity, quality and un-ordered heterogeneous images. We use feature
restructuring to exploit the correlations of both innerinter-set images.
Specifically, the residual self-attention can effectively restructure the
features using the other features within a set to emphasize the discriminative
images and eliminate the redundancy. Then, a sparse/collaborative
learning-based dependency-guided representation scheme reconstructs the probe
features conditional to the gallery features in order to adaptively align the
two sets. This enables our framework to be compatible with both verification
and open-set identification. We show that the parametric self-attention network
and non-parametric dictionary learning can be trained end-to-end by a unified
alternative optimization scheme, and that the full framework is
permutation-invariant. In the numerical experiments we conducted, our method
achieves top performance on competitive image set/video-based face recognition
and person re-identification benchmarks.Comment: Accepted to ICCV 201