scholarly journals A Key-Frame Extraction Method based on HSV Color Model for Smart Vehicle Management System

Author(s):  
Young-Wook Kwon ◽  
Se-Hoon Jung ◽  
Dong-Gook Park ◽  
Chun-Bo Sim
2007 ◽  
Author(s):  
Suk-Hyun Seo ◽  
Tae-Youn Moon ◽  
Jin-Ho Kim ◽  
Seong-Ho Hwang ◽  
Jae Wook Jeon

Author(s):  
Mohammad Minhazur Rahman ◽  
A. Z. M. Tahmidul Kabir ◽  
Shoumic Zaman Khan ◽  
Nahin Akhtar ◽  
Abdullah Al Mamun ◽  
...  

Author(s):  
V Jacintha ◽  
K H Shakthi Murugan ◽  
S Kaviya ◽  
V Hemamalini ◽  
B Harini ◽  
...  

Author(s):  
Richard Levinson ◽  
Jeremy D. Frank ◽  
Michael Iatauro ◽  
Adam Sweet ◽  
Gordon B. Aaseng ◽  
...  

Author(s):  
Sharra Mae B. Fernandez ◽  

The main purpose of this study was to provide a repository area for all registered vehicle in an organized and systematic filing, archiving and reports can be printed in real time. The system can prompt the users that the validity permit of radio frequency identification tag will be expired and need for renewal. Specifically, this paper sought to design and develop the Vehicle Management System Using RFID and evaluated its level of usability and performance as perceived by the target users. A total of 189 respondents participated in the study that was composed of five experts, three employees and 181 students, faculty and staff registered for School Year 2017-2018 using a standard questionnaire International Standard Organization/International Electrotechnical Commission 25010. Descriptive research was employed on this study based on the set objectives. Findings of the study, revealed that the functionality, the level of usability and its performance were interpreted as Very Good. These findings suggested that respondents were impressed in terms of easiest registration and monitoring of the registered vehicles that enters in and out of Northern Iloilo Polytechnic State College, Main Campus.


Complexity ◽  
2021 ◽  
Vol 2021 ◽  
pp. 1-11
Author(s):  
Zhi-guang Jiang ◽  
Xiao-tian Shi

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.


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