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Academic Journal of Computing & Information Science, 2021, 4(3); doi: 10.25236/AJCIS.2021.040304.

Application of Target Image Recognition under MRI Filtering Technology


Qingru Hu1, Binsheng Huang2, Hongyun Qi3

Corresponding Author:
Qingru Hu

1Radiology Department,Donghu Hospital, China

2General Manager, Zhaoqing Meilante Technology Co.,ltd, China

3General Practice, Henan Fengqiu People Hospital, China


Image recognition is an important foundation of computer vision, and has a wide range of applications in machine vision, traffic monitoring, and intelligent drones. At present, there are many image recognition methods, each with its own advantages under different conditions. It is worth noting that in the field of image recognition, speed and recognition rate are two important indicators for evaluating the quality of image recognition methods. Generally speaking, the speed and recognition rate of image recognition methods are not only related to the corresponding algorithms, but also related to the computational performance of on-site image processing equipment.


Sensitive information, image recognition, monitoring; information filtering technology

Cite This Paper

Qingru Hu, Binsheng Huang, Hongyun Qi. Application of Target Image Recognition under MRI Filtering Technology. Academic Journal of Computing & Information Science (2021), Vol. 4, Issue 3: 25-33. https://doi.org/10.25236/AJCIS.2021.040304.


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