TAG ME: An Accurate Name Tagging System for Web Facial Images using Search-Based Face Annotation

Main Article Content

Mr. Ansari Mohammed Abdul Qadir Ataullah, Prof. R.P.Dahake

Abstract

Now a day the demand of social media is increases rapidly and most of the part of social media is made up of multimedia content cognate as images, audio, video. Hence for taking this as a motivation we have proffer a framework for Name tagging or labeling For Web Facial Images, which are easily obtainable on the internet. TAG ME system does that name tagging by utilizing search-based face annotation (SBFA). Here we are going to select an image from a database which are weakly labeled on the internet and the "TAG ME" assign a correct and accurate names or tags to that facial image, for doing this a few challenges have to be faced the One exigent difficulty for search-based face annotation strategy is how to effectually conduct annotation by utilizing the list of nearly all identical face images and its labels which is weak that are habitually rowdy and deficient. In TAGME we have resolve this problem by utilizing an effectual semi supervised label refinement (SSLR) method for purify the labels of web and nonweb facial images with the help of machine learning techniques. Secondly we used convex optimization techniques to resolve learning problem and used effectual optimization algorithms to resolve the learning task which is based on the large scale integration productively. For additionally quicken the given system, finally TAGME system proposed clustering-based approximation algorithm which boost the scalability considerably.

Article Details

How to Cite
, M. A. M. A. Q. A. P. R. (2017). TAG ME: An Accurate Name Tagging System for Web Facial Images using Search-Based Face Annotation. International Journal on Recent and Innovation Trends in Computing and Communication, 5(7), 753 –. https://doi.org/10.17762/ijritcc.v5i7.1129
Section
Articles