Dense Descriptors for Images and Surfaces

Code for our image and surface descriptors (works with M. & A. Bronstein, E. Trulls, and A. Yuille)

SID - CVPR 2008/ TR 2012
sid.zip
NEW: S-SID/SIFT CVPR 2013
Link

SI-HKS - CVPR 2010
sihks.zip

ISC - CVPR 2012
isc.zip (includes SI-HKS)


Brief description:
SID (Scale-Invariant Descriptor) is a densely computable, scale- and rotation- invariant descriptor. We use a log-polar grid around every point to turn rotation/scalings into translation, and then use the Fourier Transform Modulus to achieve invariance.

NEW: S-SID/SIFT is a segmentation-aware variant of SID/SIFT. We use soft segmentations to discard measurements coming from image areas different from the one at the descriptor's center.

SI-HKS (Scale-Invariant Heat Kernel Signatures) extract scale-invariant shape signatures by exploiting the fact that surface scaling amounts to multiplication and scaling of a properly sampled HKS descriptor. We apply the FTM trick on HKS to achieve invariance to scale changes.

ISC (Intrinsic Shape Context) constructs a net-like grid around every surface point by shooting outwards and tracking geodesics. This allows us to build a meta-descriptor on top of HKS/SI-HKS that takes neighborhood into account, while being invariant to surface isometries.

Relevant publications (please cite if you use the related code):

E. Trulls, I. Kokkinos, A. Sanfeliu, and F. Moreno
Dense Segmentation-Aware Descriptors
Proc. IEEE Conf. on Computer Vision and Pattern Recognition (CVPR), 2013. [pdf]

I. Kokkinos, M. Bronstein, R. Littman and A. Bronstein
Intrinsic Shape Context Descriptors for Deformable Shapes
Proc. IEEE Conf. on Computer Vision and Pattern Recognition (CVPR), 2012. [pdf]

I. Kokkinos, M. Bronstein and A. Yuille
Dense Scale-Invariant Descriptors for Images and Surfaces
Technical report 2012 [pdf]

M. Bronstein and I. Kokkinos,
Scale-invariant heat kernel signatures for non-rigid shape recognition,
Proc. IEEE Conf. on Computer Vision and Pattern Recognition (CVPR), 2010. [pdf]

I. Kokkinos and A. Yuille,
Scale Invariance without Scale Selection,
Proc. IEEE Conf. on Computer Vision and Pattern Recognition (CVPR), 2008. [pdf] [bib]


These projects have been partially supported by Agence Nationale de Recherche (ANR) under Grant ANR-10-JCJC-0205.