The generalised Hough transform (GHT) extends the Hough transform (HT) to the extraction of arbitrary shapes. In practice, the performance of both techniques differs considerably. The literature suggests that, whilst the HT can provide accurate results with significant levels of noise and occlusion, the performance of the GHT is in fact much more sensitive to noise. In this paper we extend previous error analyses by considering the possible causes of bias errors of the GHT. Our analysis considers both formulation and implementation issues. First, we compare the formulation of the GHT against the general formulation of the standard HT. This shows that, in fact, the GHT definition increases the robustness of the standard HT formulation. Then,...
A review of actual knowledges on Hough transform is presented . At first, a general definition is gi...
This paper analyses the improvements that can be gained in the generalized Hough transform method fo...
The Hough transform for detecting parameterised shapes in images is still today mostly applied on bi...
The Hough transform extracts a shape by gathering evidence obtained by mapping points from the image...
A common method for finding an object's pose is the generalized Hough transform, which accumulates...
Finding arbitrary shapes within image data is a problem with applications ranging from Internet sear...
AbstractThe Hough transform is a common computer vision algorithm used to detect shapes in a noisy i...
This paper describes a Bayesian scheme for incre-menting the Hough Transform (HT) accumulator to imp...
The extraction of arbitrary 2-D shapes according to specific templates is a very important operation...
This paper contains a brief literature survey of applications and improvements of the Hough transfor...
The Generalised Hough Transform extracts arbitrary objects by using a non-analytic model shape repre...
The Hough Transform is a method for detecting curves by exploiting the duality between points on a c...
xxix, 208 leaves : ill. (some col.) ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P EIE 2002 ChauI...
Shape, in both 2D and 3D, provides a primary cue for object recognition and the Hough transform (P.V...
The paper introduces the vector-gradient Hough transform (VGHT), a modified version of the gradient ...
A review of actual knowledges on Hough transform is presented . At first, a general definition is gi...
This paper analyses the improvements that can be gained in the generalized Hough transform method fo...
The Hough transform for detecting parameterised shapes in images is still today mostly applied on bi...
The Hough transform extracts a shape by gathering evidence obtained by mapping points from the image...
A common method for finding an object's pose is the generalized Hough transform, which accumulates...
Finding arbitrary shapes within image data is a problem with applications ranging from Internet sear...
AbstractThe Hough transform is a common computer vision algorithm used to detect shapes in a noisy i...
This paper describes a Bayesian scheme for incre-menting the Hough Transform (HT) accumulator to imp...
The extraction of arbitrary 2-D shapes according to specific templates is a very important operation...
This paper contains a brief literature survey of applications and improvements of the Hough transfor...
The Generalised Hough Transform extracts arbitrary objects by using a non-analytic model shape repre...
The Hough Transform is a method for detecting curves by exploiting the duality between points on a c...
xxix, 208 leaves : ill. (some col.) ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P EIE 2002 ChauI...
Shape, in both 2D and 3D, provides a primary cue for object recognition and the Hough transform (P.V...
The paper introduces the vector-gradient Hough transform (VGHT), a modified version of the gradient ...
A review of actual knowledges on Hough transform is presented . At first, a general definition is gi...
This paper analyses the improvements that can be gained in the generalized Hough transform method fo...
The Hough transform for detecting parameterised shapes in images is still today mostly applied on bi...