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Computer & Telecommunication  2016, Vol. 1 Issue (5): 30-32    DOI:
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Research and Realization of Adaptive Clustering Image Recognition Technology Based on Cloud Architectures
Huang Xuepei1,Zhang Yan2,Xiang Ju3,Zhang Jiafeng2,Tang Lanqin2
College of Clinical Medicine, Changsha Medical University College of Computer Science,Changsha Medical University College of Basic Medicine, Changsha Medical University
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Abstract  This paper provides high- precision image recognition service for mobile platforms. It analyzes and researches on SIFT and BRISK algorithm, and proposes a novel, efficient, lightweight adaptive clustering algorithm for image recognition which is suitable for Android. It designs a high-precision image recognition system based on the Android platform, using a variety of resources of Android to develop image recognition software. The results show that the system hardware is simple, low-priced, reliable, easy to be used and extended.
Key wordsAndroid      SIFT algorithm      big data      image recognition     
Published: 10 November 2017
:  TP391.41  

Cite this article:

Huang Xuepei, Zhang Yan, Xiang Ju, Zhang Jiafeng, Tang Lanqin. Research and Realization of Adaptive Clustering Image Recognition Technology Based on Cloud Architectures. Computer & Telecommunication, 2016, 1(5): 30-32.

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https://www.computertelecom.com.cn/EN/     OR     https://www.computertelecom.com.cn/EN/Y2016/V1/I5/30

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