An algorithm is proposed for 3D object representation using generic 3D features which are transformation and scale invariant. Descriptive 3D features and their relations are used to construct a graphical model for the object which is later trained and then used for detection purposes. Descriptive 3D features are the fundamental structures which are extracted from the surface of the 3D scanner output. This surface is described by mean and Gaussian curvature values at every data point at various scales and a scale-space search is performed in order to extract the fundamental structures and to estimate the location and the scale of each fundamental structure
A generic, transform invariant 3D facial feature detection method based on mean (H) and Gaussian (K)...
The computer vision and pattern recognition communities have re-cently witnessed a surge of feature-...
Recent advancement in 3D digitization techniques have prompted to the need for 3D object retrieval. ...
3D object recognition is performed using a scale and orientation invariant feature extraction method...
In this study a representation using scale and invariant generic 3D features, for 3D facial models i...
In this thesis, a generic, scale and resolution invariant method to extract 3D features from 3D surf...
An algorithm is proposed to extract transformation and scale invariant 3D fundamental elements from ...
We describe an approach to the classification of 3-D objects using a multi-scale representation. Thi...
Using transform invariant 3D fatures obtained from a database of 3D range images, geometric hashing ...
We describe an approach to the classification of 3-D objects using a multi-scale representation. Thi...
This thesis examines an approach to the representation of 3-D objects based on multi-scale surface p...
In this paper, we present a method for extracting salient local features from 3D models using surfac...
This paper presents a method for extracting distinctive invariant features from images that can be u...
Abstract—For many practical applications in industrial and medical fields, 3D object recognition bas...
This article introduces a novel method for 3D object recognition, which utilizes well-known local fe...
A generic, transform invariant 3D facial feature detection method based on mean (H) and Gaussian (K)...
The computer vision and pattern recognition communities have re-cently witnessed a surge of feature-...
Recent advancement in 3D digitization techniques have prompted to the need for 3D object retrieval. ...
3D object recognition is performed using a scale and orientation invariant feature extraction method...
In this study a representation using scale and invariant generic 3D features, for 3D facial models i...
In this thesis, a generic, scale and resolution invariant method to extract 3D features from 3D surf...
An algorithm is proposed to extract transformation and scale invariant 3D fundamental elements from ...
We describe an approach to the classification of 3-D objects using a multi-scale representation. Thi...
Using transform invariant 3D fatures obtained from a database of 3D range images, geometric hashing ...
We describe an approach to the classification of 3-D objects using a multi-scale representation. Thi...
This thesis examines an approach to the representation of 3-D objects based on multi-scale surface p...
In this paper, we present a method for extracting salient local features from 3D models using surfac...
This paper presents a method for extracting distinctive invariant features from images that can be u...
Abstract—For many practical applications in industrial and medical fields, 3D object recognition bas...
This article introduces a novel method for 3D object recognition, which utilizes well-known local fe...
A generic, transform invariant 3D facial feature detection method based on mean (H) and Gaussian (K)...
The computer vision and pattern recognition communities have re-cently witnessed a surge of feature-...
Recent advancement in 3D digitization techniques have prompted to the need for 3D object retrieval. ...