Title
Fast and accurate object detection in high resolution 4K and 8K video using GPUs
Abstract
Machine learning has celebrated a lot of achievements on computer vision tasks such as object detection, but the traditionally used models work with relatively low resolution images. The resolution of recording devices is gradually increasing and there is a rising need for new methods of processing high resolution data. We propose an attention pipeline method which uses two staged evaluation of each image or video frame under rough and refined resolution to limit the total number of necessary evaluations. For both stages, we make use of the fast object detection model YOLO v2. We have implemented our model in code, which distributes the work across GPUs. We maintain high accuracy while reaching the average performance of 3-6 fps on 4K video and 2 fps on 8K video.
Year
DOI
Venue
2018
10.1109/HPEC.2018.8547574
2018 IEEE High Performance extreme Computing Conference (HPEC)
Keywords
DocType
Volume
GPU,low resolution images,fast object detection model YOLO v2,refined resolution,rough resolution,attention pipeline method,high resolution data,recording devices,computer vision tasks,machine learning,high resolution 4K
Conference
abs/1810.10551
ISSN
ISBN
Citations 
2377-6943
978-1-5386-5990-8
1
PageRank 
References 
Authors
0.42
9
2
Name
Order
Citations
PageRank
Vít Ruzicka110.42
Franz Franchetti297488.39