Application Research of Key Frames Extraction Technology Combined with Optimized Faster R-CNN Algorithm in Traffic Video Analysis

The intelligent transportation system under the big data environment is the development direction of the future transportation system. It effectively integrates advanced information technology, data communication transmission technology, electronic sensing technology, control technology, and compute...

Full description

Bibliographic Details
Main Authors: Zhi-guang Jiang, Xiao-tian Shi
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/6620425
id doaj-ec490d70bf8e495d96f947dc4712d4bd
record_format Article
spelling doaj-ec490d70bf8e495d96f947dc4712d4bd2021-02-15T12:52:52ZengHindawi-WileyComplexity1076-27871099-05262021-01-01202110.1155/2021/66204256620425Application Research of Key Frames Extraction Technology Combined with Optimized Faster R-CNN Algorithm in Traffic Video AnalysisZhi-guang Jiang0Xiao-tian Shi1Hebei University of Science and Technology, Shijiazhuang 050000, ChinaShi Jiazhuang University of Applied Technology, Shijiazhuang 050081, ChinaThe intelligent transportation system under the big data environment is the development direction of the future transportation system. It effectively integrates advanced information technology, data communication transmission technology, electronic sensing technology, control technology, and computer technology and applies them to the entire ground transportation management system to establish a real-time, accurate, and efficient comprehensive transportation management system that works on a large scale and in all directions. Intelligent video analysis is an important part of smart transportation. In order to improve the accuracy and time efficiency of video retrieval schemes and recognition schemes, this article firstly proposes a segmentation and key frame extraction method for video behavior recognition, using a multi-time scale dual-stream network to extract video features, improving the efficiency and efficiency of video behavior detection. On this basis, an improved algorithm for vehicle detection based on Faster R-CNN is proposed, and the Faster R-CNN network feature extraction layer is improved by using the principle of residual network, and a hole convolution is added to the network to filter out the redundant features of high-resolution video images to improve the problem of vehicle missed detection in the original algorithm. The experimental results show that the key frame extraction technology combined with the optimized Faster R-CNN algorithm model greatly improves the accuracy of detection and reduces the leakage. The detection rate is satisfactory.http://dx.doi.org/10.1155/2021/6620425
collection DOAJ
language English
format Article
sources DOAJ
author Zhi-guang Jiang
Xiao-tian Shi
spellingShingle Zhi-guang Jiang
Xiao-tian Shi
Application Research of Key Frames Extraction Technology Combined with Optimized Faster R-CNN Algorithm in Traffic Video Analysis
Complexity
author_facet Zhi-guang Jiang
Xiao-tian Shi
author_sort Zhi-guang Jiang
title Application Research of Key Frames Extraction Technology Combined with Optimized Faster R-CNN Algorithm in Traffic Video Analysis
title_short Application Research of Key Frames Extraction Technology Combined with Optimized Faster R-CNN Algorithm in Traffic Video Analysis
title_full Application Research of Key Frames Extraction Technology Combined with Optimized Faster R-CNN Algorithm in Traffic Video Analysis
title_fullStr Application Research of Key Frames Extraction Technology Combined with Optimized Faster R-CNN Algorithm in Traffic Video Analysis
title_full_unstemmed Application Research of Key Frames Extraction Technology Combined with Optimized Faster R-CNN Algorithm in Traffic Video Analysis
title_sort application research of key frames extraction technology combined with optimized faster r-cnn algorithm in traffic video analysis
publisher Hindawi-Wiley
series Complexity
issn 1076-2787
1099-0526
publishDate 2021-01-01
description The intelligent transportation system under the big data environment is the development direction of the future transportation system. It effectively integrates advanced information technology, data communication transmission technology, electronic sensing technology, control technology, and computer technology and applies them to the entire ground transportation management system to establish a real-time, accurate, and efficient comprehensive transportation management system that works on a large scale and in all directions. Intelligent video analysis is an important part of smart transportation. In order to improve the accuracy and time efficiency of video retrieval schemes and recognition schemes, this article firstly proposes a segmentation and key frame extraction method for video behavior recognition, using a multi-time scale dual-stream network to extract video features, improving the efficiency and efficiency of video behavior detection. On this basis, an improved algorithm for vehicle detection based on Faster R-CNN is proposed, and the Faster R-CNN network feature extraction layer is improved by using the principle of residual network, and a hole convolution is added to the network to filter out the redundant features of high-resolution video images to improve the problem of vehicle missed detection in the original algorithm. The experimental results show that the key frame extraction technology combined with the optimized Faster R-CNN algorithm model greatly improves the accuracy of detection and reduces the leakage. The detection rate is satisfactory.
url http://dx.doi.org/10.1155/2021/6620425
work_keys_str_mv AT zhiguangjiang applicationresearchofkeyframesextractiontechnologycombinedwithoptimizedfasterrcnnalgorithmintrafficvideoanalysis
AT xiaotianshi applicationresearchofkeyframesextractiontechnologycombinedwithoptimizedfasterrcnnalgorithmintrafficvideoanalysis
_version_ 1714867075747414016