In this paper, we propose a novel shape representation we call Directional Histogram Model (DHM). It captures the shape variation of an object and is invariant to scaling and rigid transforms. The DHM is computed by first extracting a directional distribution of thickness histogram signatures, which are translation invariant. We show how the extrac-tion of the thickness histogram distribution can be accel-erated using conventional graphics hardware. Orientation invariance is achieved by computing the spherical harmonic transform of this distribution. Extensive experiments show that the DHM is capable of high discrimination power and is robust to noise.
A biologically inspired model architecture for inferring 3D shape from texture is proposed. The mode...
This article describes a method for reducing the shape distortions due to scale-space smoothing that...
Abstract—Measuring the similarity between articulated shapes is a fundamental yet challenging proble...
In this paper, we propose a novel shape representation we call Directional Histogram Model (DHM). It...
Similarity measuring is a key problem for 3D model retrieval. In this paper, we propose a novel shap...
In this paper, we describe our preliminary findings in applying the spherical parameterization and g...
A statistical representation of three-dimensional shapes is introduced, based on a novel four-dimens...
In this paper, a Scale-orientation histogram is defined for analyzing the "directionality" and "peri...
Histograms have been used for Shape Representation and Retrieval. In this paper, the traditional tec...
In statistical shape analysis, the establishment of correspondence and defining shape representation...
The histogram of gradients for three-dimensional images (HOG3D) has been widely used to generate des...
This paper makes use of the continuous eccentricity transform to perform 3D shape matching. The ecce...
Shape matching plays an important role in many application fields. In this paper, we propose a novel...
This paper presents a robust and rotation invariant local surface descriptor by encoding the positio...
This paper presents a novel method for 2D and 3D shape matching that is insensitive to articulation....
A biologically inspired model architecture for inferring 3D shape from texture is proposed. The mode...
This article describes a method for reducing the shape distortions due to scale-space smoothing that...
Abstract—Measuring the similarity between articulated shapes is a fundamental yet challenging proble...
In this paper, we propose a novel shape representation we call Directional Histogram Model (DHM). It...
Similarity measuring is a key problem for 3D model retrieval. In this paper, we propose a novel shap...
In this paper, we describe our preliminary findings in applying the spherical parameterization and g...
A statistical representation of three-dimensional shapes is introduced, based on a novel four-dimens...
In this paper, a Scale-orientation histogram is defined for analyzing the "directionality" and "peri...
Histograms have been used for Shape Representation and Retrieval. In this paper, the traditional tec...
In statistical shape analysis, the establishment of correspondence and defining shape representation...
The histogram of gradients for three-dimensional images (HOG3D) has been widely used to generate des...
This paper makes use of the continuous eccentricity transform to perform 3D shape matching. The ecce...
Shape matching plays an important role in many application fields. In this paper, we propose a novel...
This paper presents a robust and rotation invariant local surface descriptor by encoding the positio...
This paper presents a novel method for 2D and 3D shape matching that is insensitive to articulation....
A biologically inspired model architecture for inferring 3D shape from texture is proposed. The mode...
This article describes a method for reducing the shape distortions due to scale-space smoothing that...
Abstract—Measuring the similarity between articulated shapes is a fundamental yet challenging proble...