We investigate the problem of line detection in digital image processing and in special how state of the art algorithms behave in the presence of noise and whether CPU efficiency can be improved by the combination of a Monte Carlo Tree Search, hierarchical space decomposition, and parallel computing. The starting point of the investigation is the method introduced in 1962 by Paul Hough for detecting lines in binary images. Extended in the 1970s to the detection of space forms, what came to be known as Hough Transform (HT) has been proposed, for example, in the context of track fitting in the LHC ATLAS and CMS projects. The Hough Transform transfers the problem of line detection, for example, into one of optimization of the peak in a vote co...
In this paper, we introduce a novel technique for memory compression of the Hough transform. Our app...
We developed an integration-based line detection algorithm. Existing line detection methods such as ...
The Hough transform is a popular method of finding parametric curves in noisy data. It is a key prim...
We investigate the problem of line detection in digital image processing and in special how state of...
We investigate the problem of line detection in digital image processing and in special how state o...
AbstractThis paper deals with the problem of detecting every line component, a set of edge points cl...
The Hough transform is a well-established scheme for detecting digital line components in a binary e...
Line detection is very important task in image processing field. It is mainly used in auto focusing ...
A robust and fast line detection method based on Hough transform (HT) is proposed in this paper. Edg...
The following text describes the rst try in implementing a track-detection algorithm, based on the H...
The Hough transform is a means for finding straight lines in an image. Since it is robust and effici...
Due to the character of the original source materials and the nature of batch digitization, quality ...
The use of the Hough transforms to identify shapes or images has been extensively studied in the pas...
In a wide range of image processing and computer vision problems, line segment detection is one of t...
An important aspect of any scientific discipline is the objective and independent comparison of algo...
In this paper, we introduce a novel technique for memory compression of the Hough transform. Our app...
We developed an integration-based line detection algorithm. Existing line detection methods such as ...
The Hough transform is a popular method of finding parametric curves in noisy data. It is a key prim...
We investigate the problem of line detection in digital image processing and in special how state of...
We investigate the problem of line detection in digital image processing and in special how state o...
AbstractThis paper deals with the problem of detecting every line component, a set of edge points cl...
The Hough transform is a well-established scheme for detecting digital line components in a binary e...
Line detection is very important task in image processing field. It is mainly used in auto focusing ...
A robust and fast line detection method based on Hough transform (HT) is proposed in this paper. Edg...
The following text describes the rst try in implementing a track-detection algorithm, based on the H...
The Hough transform is a means for finding straight lines in an image. Since it is robust and effici...
Due to the character of the original source materials and the nature of batch digitization, quality ...
The use of the Hough transforms to identify shapes or images has been extensively studied in the pas...
In a wide range of image processing and computer vision problems, line segment detection is one of t...
An important aspect of any scientific discipline is the objective and independent comparison of algo...
In this paper, we introduce a novel technique for memory compression of the Hough transform. Our app...
We developed an integration-based line detection algorithm. Existing line detection methods such as ...
The Hough transform is a popular method of finding parametric curves in noisy data. It is a key prim...