GPU based Parallel Optimization for Real Time Panoramic Video Stitching

10/04/2018
by   Chengyao Du, et al.
0

Panoramic video is a sort of video recorded at the same point of view to record the full scene. With the development of video surveillance and the requirement for 3D converged video surveillance in smart cities, CPU and GPU are required to possess strong processing abilities to make panoramic video. The traditional panoramic products depend on post processing, which results in high power consumption, low stability and unsatisfying performance in real time. In order to solve these problems,we propose a real-time panoramic video stitching framework.The framework we propose mainly consists of three algorithms, LORB image feature extraction algorithm, feature point matching algorithm based on LSH and GPU parallel video stitching algorithm based on CUDA.The experiment results show that the algorithm mentioned can improve the performance in the stages of feature extraction of images stitching and matching, the running speed of which is 11 times than that of the traditional ORB algorithm and 639 times than that of the traditional SIFT algorithm. Based on analyzing the GPU resources occupancy rate of each resolution image stitching, we further propose a stream parallel strategy to maximize the utilization of GPU resources. Compared with the L-ORB algorithm, the efficiency of this strategy is improved by 1.6-2.5 times, and it can make full use of GPU resources. The performance of the system accomplished in the paper is 29.2 times than that of the former embedded one, while the power dissipation is reduced to 10W.

READ FULL TEXT
research
07/14/2018

GPU-based Commonsense Paradigms Reasoning for Real-Time Query Answering and Multimodal Analysis

We utilize commonsense knowledge bases to address the problem of real- t...
research
04/12/2016

GPU-FV: Realtime Fisher Vector and Its Applications in Video Monitoring

Fisher vector has been widely used in many multimedia retrieval and visu...
research
12/01/2022

Real-Time High-Quality Stereo Matching System on a GPU

In this paper, we propose a low error rate and real-time stereo vision s...
research
10/15/2019

Tiny Video Networks

Video understanding is a challenging problem with great impact on the ab...
research
04/15/2013

GPU Acclerated Automated Feature Extraction from Satellite Images

The availability of large volumes of remote sensing data insists on high...
research
01/20/2022

Accelerating Laue Depth Reconstruction Algorithm with CUDA

The Laue diffraction microscopy experiment uses the polychromatic Laue m...
research
07/04/2018

TripleID-Q: RDF Query Processing Framework using GPU

Resource Description Framework (RDF) data represents information linkage...

Please sign up or login with your details

Forgot password? Click here to reset