• Corpus ID: 10381221

Image and video processing on CUDA: state of the art and future directions

@inproceedings{Salvo2011ImageAV,
  title={Image and video processing on CUDA: state of the art and future directions},
  author={R. Salvo and C. Pino},
  year={2011}
}
In the last few years a myriad of computer graphic applications have been developed using standard programming techniques, which are mainly based on multicore general-purpose processors (CPUs) architectures. Due to the rapid turning towards high definition multimedia, more and more researches have been done that need both computational resources and memory space to achieve high performance. To this end, more recently the general-purpose computing on graphic processing units (GPGPUs… 
A survey of GPU-based medical image computing techniques.
TLDR
The continuous advancement of GPU computing is reviewed and the existing traditional applications in three areas of medical image processing, namely, segmentation, registration and visualization, are surveyed.
Analyzing Brain Tumor MRI to Demonstrate GPU-based Medical Image Segmentation∗
Image processing, a computationally intensive task must be done quickly, efficiently, and painlessly in a variety of medical imaging applications to assure quality for both patients and clinicians.
Investigation of heterogeneous computing platforms for real-time data analysis in the CBM experiment
TLDR
How heterogeneous computing platforms, Graphical Processing Units (GPUs) and CPUs, can be used to solve the associated computing problems on the example of the first-level event selection process sensitive to J/ ψ decays using muon detectors is described.
Real time area-based stereo matching algorithm for multimedia video devices
TLDR
It is proved that the GPU algorithm that uses only global memory can be used successfully in that kind of tasks and is more hardware-independent than algorithms that operate on shared memory.
of Fuzzy Edge Detection using GPU in MA TLAB
TLDR
The performance of fuzzy edge detection algorithm is improved using GPU platform by exploiting data-level parallelism and scatter/gather parallel pattern inMatlab environment.
Implementation of intrusion detection system in CUDA for real-time multi-node streaming
TLDR
This paper shares the implementation of the multi node video analytics specifically focusing on intrusion detection using general purpose graphical processing unit (GPGPU) to offload the video analytics processing.
Satellite image processing on parallel computing: A technical review
TLDR
This paper takes a review of various SVM implementation and GPU based algorithm approaches and effect of feature selection on SVM efficiency for simple image is also studied.
An efficient implementation of fuzzy edge detection using GPU in MATLAB
  • F. Hoseini, A. Shahbahrami
  • Computer Science
    2015 International Conference on High Performance Computing & Simulation (HPCS)
  • 2015
TLDR
The performance of fuzzy edge detection algorithm is improved using GPU platform by exploiting data-level parallelism and scatter/gather parallel communication pattern in Matlab environment.
Using texture measures for visual quality assessment
TLDR
This work analyzed the LBP operator and some of its state-of-the-art extensions addressing the problem of assessing image quality, and proposes a framework for using these operators in order to produce new image quality metrics.
High Performance Implementation of Fuzzy C-Means and Watershed Algorithms for MRI Segmentation
TLDR
The main goal of this paper is to improve the performance of fuzzy c-means clustering through the parallel implementation of this algorithm, which has attained competing results with other papers.
...
1
2
...

References

SHOWING 1-10 OF 53 REFERENCES
Parallelization of a Video Segmentation Algorithm on CUDA-Enabled Graphics Processing Units
TLDR
This paper presents the parallelization of a video segmentation application on GPU hardware, which implements an algorithm for abrupt and gradual transitions detection, a critical part of the algorithm requires highly intensive computation for video frames features calculation.
Parallel Image Processing Based on CUDA
TLDR
The distinct features ofCUDA GPU are analyzed, the general program mode of CUDA is summarized and several classical image processing algorithms by CUDA, such as histogram equalization, removing clouds, edge detection and DCT encode and decode are implemented.
A performance study of general-purpose applications on graphics processors using CUDA
TLDR
This paper uses NVIDIA's C-like CUDA language and an engineering sample of their recently introduced GTX 260 GPU to explore the effectiveness of GPUs for a variety of application types, and describes some specific coding idioms that improve their performance on the GPU.
Low-cost, high-speed computer vision using NVIDIA's CUDA architecture
TLDR
The efficiency of this approach is demonstrated by a parallelization and optimization of Canny's edge detection algorithm, and applying it to a computation and data-intensive video motion tracking algorithm known as ldquovector coherence mappingrdquo (VCM).
Exploring NVIDIA-CUDA for video coding
TLDR
It is discovered that the difference in performance when CUDA is not used properly can be over 100x and the main goal of this paper is to evaluate the capabilities of NVIDIA/CUDA and develop a process for implementing video/multimedia applications.
Fast GPU-Based CT Reconstruction using the Common Unified Device Architecture (CUDA)
TLDR
This paper presents an innovative implementation of the most time-consuming parts of the FDK algorithm: filtering and back-projection, and explains the required transformations to parallelize the algorithm for the CUDA architecture.
Efficient integral image computation on the GPU
TLDR
An integral image algorithm that can run in real-time on a Graphics Processing Unit (GPU) via the NIVIDA CUDA programming model that makes use of the work-efficient scan algorithm that is explicated elsewhere.
The FFT on a GPU
TLDR
A system that can synthesize an image by conventional means, perform the FFT, filter the image, and finally apply the inverse FFT in well under 1 second for a 512 by 512 image is demonstrated.
A Survey of General-Purpose Computation on Graphics Hardware
TLDR
The techniques used in mapping general-purpose computation to graphics hardware will be generally useful for researchers who plan to develop the next generation of GPGPU algorithms and techniques.
Fast and Efficient Dense Variational Stereo on GPU
TLDR
This paper presents a dense stereo algorithm, handling occlusions, using three cameras as inputs and entirely implemented on a graphics processing unit (GPU), leading to nearly video frame rate reconstruction.
...
1
2
3
4
5
...