Caption Mining over Distributed Database with Face Annotation Review  
  Authors : Afshan Jabeen; Raana Syeda

 

A face annotation has many application the main part of based face annotation is to management of most same facial images and their weak data labels. T problem, different method are adopted. The efficiency of annotating systems are improved by using these methods. This paper proposes a review on various techniques used for detection and analysis of each technique. Combine techniques are used in retrieving facial images based on query. So it is effective to label the images with their exact names. The detected face recognition techniques can annotate the faces with exact data labels which will help to improve the detection more efficiently. The method is to find the face data association in images with data label. Many methods have proposed to use this while suffering from some common.

 

Published In : IJCAT Journal Volume 2, Issue 11

Date of Publication : November 2015

Pages : 460 - 462

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Publication Link :Caption Mining over Distributed Database with Face Annotation Review

 

 

 

Afshan Jabeen : Department of Computer Science & Engg, Jhulelal Institute of Tech, Lonara, RTMNU Nagpur, Maharashtra, India

Raana Syeda : Department of Computer Science & Engg, Jhulelal Institute of Tech, Lonara, RTMNU Nagpur, Maharashtra, India

 

 

 

 

 

 

 

Face annotation

Content based Image Retrieval

Image Mining

Distributed Database

The face annotation on labeled images. So research works and new methods are being proposed. The research in this field importance as it is very useful in searching and social Media. The future work will work on multi person data task and thereby efficiency and accuracy of result. If the techniques are implemented properly, then the data label problem will be solved.

 

 

 

 

 

 

 

 

 

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