Superquadrics are a a class volumetric primitive which can model objects including rectangular solids with rounded corners, ellipsoids, octaheadrons, 8-pointed stars, hyperbolic sheets, and toroids with cross sections ranging from rectangles with rounded corners to elliptical regions. They can be stretched, bent, tapered and combined with boolean operations to model a wide range of objects. This paper discusses our progress at attempting to recover a subclass of superquadrics from 3D depth data. The first section of this paper presents a mathematical definition of superquadrics. Some of the rationale for using superquadrics for object recognition is then discussed. Briefly, superquadrics are flexible enough to represent a wide class of obje...
The task of reconstructing 3D scenes based on visual data represents a longstanding problem in compu...
With the recent advancements in deep neural computation, we devise a method to recover superquadric ...
With the recent advancements in deep neural computation, we devise a method to recover superquadric ...
Superellipsoids are parameterized solids which can appear like cubes or spheres or octahedrons or 8-...
This paper proposes a technique for object recognition using superquadric built models. Superquadric...
Object representation denotes representing three-dimensional (3D) real-world objects with known grap...
This paper proposes a technique for object recognition using superquadric built models. Superquadric...
... In this paper, we present a novel approach, which is called extended superquadric, to extend su...
Superquadric are mathematically quite simple and have the ability to obtain a variety of shapes usin...
This paper proposes a technique for object recognition using superquadric built models. Superquadric...
Undeformed superquadrics are volumetric modeling primitives with an extensive shape vocabulary that ...
Undeformed superquadrics are volumetric modeling primitives with an extensive shape vocabulary that ...
We present a novel approach to reliable and efficient recovery of part-descriptions in terms of supe...
Interpreting objects with basic geometric primitives has long been studied in computer vision. Among...
A new model for representing an unorganised 3D data points set is proposed. Based on superquadrics, ...
The task of reconstructing 3D scenes based on visual data represents a longstanding problem in compu...
With the recent advancements in deep neural computation, we devise a method to recover superquadric ...
With the recent advancements in deep neural computation, we devise a method to recover superquadric ...
Superellipsoids are parameterized solids which can appear like cubes or spheres or octahedrons or 8-...
This paper proposes a technique for object recognition using superquadric built models. Superquadric...
Object representation denotes representing three-dimensional (3D) real-world objects with known grap...
This paper proposes a technique for object recognition using superquadric built models. Superquadric...
... In this paper, we present a novel approach, which is called extended superquadric, to extend su...
Superquadric are mathematically quite simple and have the ability to obtain a variety of shapes usin...
This paper proposes a technique for object recognition using superquadric built models. Superquadric...
Undeformed superquadrics are volumetric modeling primitives with an extensive shape vocabulary that ...
Undeformed superquadrics are volumetric modeling primitives with an extensive shape vocabulary that ...
We present a novel approach to reliable and efficient recovery of part-descriptions in terms of supe...
Interpreting objects with basic geometric primitives has long been studied in computer vision. Among...
A new model for representing an unorganised 3D data points set is proposed. Based on superquadrics, ...
The task of reconstructing 3D scenes based on visual data represents a longstanding problem in compu...
With the recent advancements in deep neural computation, we devise a method to recover superquadric ...
With the recent advancements in deep neural computation, we devise a method to recover superquadric ...