With the addition of free programmable components to modern graphics hardware, graphics processing units (GPUs) become increasingly interesting for general purpose computations, especially due to utilizing parallel buffer processing. In this paper we present methods and techniques that take advantage of modern graphics hardware for real-time tracking and recognition of feature-points. The focus lies on the generation of feature vectors from input images in the various stages. For the generation of feature-vectors the Scale Invariant Feature Transform (SIFT) method [Low04a] is used due to its high stability against rotation, scale and lighting condition changes of the processed images. We present results of the various stages for featu...
SIFT algorithm is the most efficient and powerful algorithm to describe the features of images and i...
In this paper, we examined heterogeneous architectures, for their suitability to run the scale invar...
Feature extraction in digital image processing is a very intensive task for a CPU. In order to achie...
With the addition of free programmable components to modern graphics hardware, graphics processing u...
With the addition of free programmable components to modern graphics hardware, graphics processing u...
Scale-Invariant Feature Transform (SIFT) is one of the widely used interest point features. It has b...
This article presents a fully functional GPU-based implementation of Scale Invariant Feature Transfo...
Abstract—A number of computer vision and image processing algorithms rely on image features, and com...
Computer vision algorithms, such as scale-invariant feature transform (SIFT), are used in many impor...
Image feature detection is a key task in computer vision. Scale Invariant Feature Transform (SIFT) i...
ABSTRACT: In pattern recognition and image processing, feature extraction is simple form of dimensio...
Ever since the introduction of freely programmable hardware components into modern graphics hardware...
Emerging mobile applications, such as augmented reality, de-mand robust feature detection at high fr...
This paper parallelizes and characterizes an important computer vision application — Scale Invariant...
Abstract: Scale-invariant feature transform (SIFT) was an algorithm in computer vision to detect and...
SIFT algorithm is the most efficient and powerful algorithm to describe the features of images and i...
In this paper, we examined heterogeneous architectures, for their suitability to run the scale invar...
Feature extraction in digital image processing is a very intensive task for a CPU. In order to achie...
With the addition of free programmable components to modern graphics hardware, graphics processing u...
With the addition of free programmable components to modern graphics hardware, graphics processing u...
Scale-Invariant Feature Transform (SIFT) is one of the widely used interest point features. It has b...
This article presents a fully functional GPU-based implementation of Scale Invariant Feature Transfo...
Abstract—A number of computer vision and image processing algorithms rely on image features, and com...
Computer vision algorithms, such as scale-invariant feature transform (SIFT), are used in many impor...
Image feature detection is a key task in computer vision. Scale Invariant Feature Transform (SIFT) i...
ABSTRACT: In pattern recognition and image processing, feature extraction is simple form of dimensio...
Ever since the introduction of freely programmable hardware components into modern graphics hardware...
Emerging mobile applications, such as augmented reality, de-mand robust feature detection at high fr...
This paper parallelizes and characterizes an important computer vision application — Scale Invariant...
Abstract: Scale-invariant feature transform (SIFT) was an algorithm in computer vision to detect and...
SIFT algorithm is the most efficient and powerful algorithm to describe the features of images and i...
In this paper, we examined heterogeneous architectures, for their suitability to run the scale invar...
Feature extraction in digital image processing is a very intensive task for a CPU. In order to achie...