[PDF][PDF] SHREC'10 Track: Non-rigid 3D Shape Retrieval.
Non-rigid 3D shape retrieval has become a research hotpot in communities of computer
graphics, computer vision, pattern recognition, etc. In this paper, we present the results of the …
graphics, computer vision, pattern recognition, etc. In this paper, we present the results of the …
Continuous gap contact formulation based on the screened Poisson equation
We introduce a PDE-based node-to-element contact formulation as an alternative to
classical, purely geometrical formulations. It is challenging to devise solutions to nonsmooth …
classical, purely geometrical formulations. It is challenging to devise solutions to nonsmooth …
2D skeleton extraction based on heat equation
Object skeleton is a useful geometric tool for shape analysis tasks. It encodes the topological
structure of the primitive shape and preserves a geometric cue as well. Skeletonization is a …
structure of the primitive shape and preserves a geometric cue as well. Skeletonization is a …
Landmarks inside the shape: Shape matching using image descriptors
In the last few decades, significant advances in image matching are provided by rich local
descriptors that are defined through physical measurements such as reflectance. As such …
descriptors that are defined through physical measurements such as reflectance. As such …
Complexity of Shapes Embedded in Zn With a Bias Towards Squares
Shape complexity is a hard-to-quantify quality, mainly due to its relative nature. Biased by
Euclidean thinking, circles are commonly considered as the simplest. However, their …
Euclidean thinking, circles are commonly considered as the simplest. However, their …
Convolutional shape-aware representation for 3d object classification
Deep learning has recently emerged as one of the most popular and powerful paradigms for
learning tasks. In this paper, we present a deep learning approach to 3D shape …
learning tasks. In this paper, we present a deep learning approach to 3D shape …
Resonant deformable matching: Simultaneous registration and reconstruction
In the past decade we have seen the emergence of many efficient algorithms for estimating
non-rigid deformations registering a template to target features. Registration of density …
non-rigid deformations registering a template to target features. Registration of density …
[PDF][PDF] Deep Shape Representations for 3D Object Recognition
H Ghodrati Asbfroushani - 2017 - spectrum.library.concordia.ca
Deep learning is a rapidly growing discipline that models high-level features in data as
multilayered neural networks. The recent trend toward deep neural networks has been …
multilayered neural networks. The recent trend toward deep neural networks has been …
Shape deformation measures for white matter fibers
Diffusion MRI (DMRI) provides us with the anatomy of the white matter fibers in the brain.
Extracting shape information is a necessary step to analyze the deformation in the white …
Extracting shape information is a necessary step to analyze the deformation in the white …
[PDF][PDF] An Evaluation of Local Feature Encodings for Shape Retrieval.
Local features are successfully used in 3D shape retrieval by encoding features descriptors
into global shape signatures. Previous 3D retrieval systems use different encoding methods …
into global shape signatures. Previous 3D retrieval systems use different encoding methods …