ONLINE LEARNING FOR IMAGE PROCESSING IN NETWORKED SETTING

Authors

  • Ankush Rai School of Computing Science & Engineering, VIT University, Chennai, Tamil Nadu, India
  • Jagadeesh Kannan R School of Computing Science & Engineering, VIT University, Chennai, Tamil Nadu, India

DOI:

https://doi.org/10.22159/ajpcr.2017.v10s1.19738

Keywords:

On-line learning, Image processing over network

Abstract

In the past decade development of machine learning algorithm for network settings has witnessed little advancements owing to slow development of technologies for improving bandwidth and latency.  In this study we present a novel online learning algorithm for network based computational operations in image processing setting

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References

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Published

01-04-2017

How to Cite

Rai, A., and J. K. R. “ONLINE LEARNING FOR IMAGE PROCESSING IN NETWORKED SETTING”. Asian Journal of Pharmaceutical and Clinical Research, vol. 10, no. 13, Apr. 2017, pp. 284-7, doi:10.22159/ajpcr.2017.v10s1.19738.

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Original Article(s)

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