UML-based systems integration modeling technique for the design and development of intelligent transportation management system

Author(s):  
Yonghua Zhou ◽  
Yuliu Chen ◽  
Huapu Lu
Author(s):  
Pallavi Dharwada ◽  
Joel S. Greenstein ◽  
Anand K. Gramopadhye ◽  
Steve J. Davis

Author(s):  
Muhammad Mukti Adji Adiatmadja

The purpose of this papers is to explain the study result of the writer about the design of E-Archive Application for increasing the service performance of Kantor Imigrasi Kelas III Non TPI Kotabumi. Based on the study that writer do, known if archive management system of an Immigration Office can affecting the performance of Immigration Office’s service. The main case that making some troubles is archive management system of Kantor Imigrasi Kelas III Non TPI Kotabumi still not using Paperless system. That thing affect on the employees’s workload and inflicting problems like the long archival search process, obstruction of the Immigration Administrative Sanction and Criminal Act completion process, and even the archival damage because dust, water, or insect. In the development proces, this E-Archive Application will be adjusted with Kantor Imigrasi Kelas III Non TPI Kotabumi’s need. This E-Archive Application be expected to integrated with immigration service Front Desk of Immigration Office and Aplikasi Antrian Paspor Online (APAPO) directly, and can be implemented by Kantor Imigrasi Kelas III Non TPI Kotabumi and another Immigration Office in Indonesia, so that can help increasing and optimizing the service performance of Immigration Offices.  


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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