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Impulse Technologies
                                      Beacons U to World of technology
        044-42133143, 98401 03301,9841091117 ieeeprojects@yahoo.com www.impulse.net.in
          Web-and-Personal-Image-Annotation-by-Mining-Label-
           Correlation-With-Relaxed-Visual-Graph-Embedding
   Abstract
           The number of digital images rapidly increases, and it becomes an important
   challenge to organize these resources effectively. As a way to facilitate image
   categorization and retrieval, automatic image annotation has received much research
   attention. Considering that there are a great number of unlabeled images available, it is
   beneficial to develop an effective mechanism to leverage unlabeled images for large-
   scale image annotation. Meanwhile, a single image is usually associated with multiple
   labels, which are inherently correlated to each other. A straightforward method of image
   annotation is to decompose the problem into multiple independent single-label problems,
   but this ignores the underlying correlations among different labels. In this paper, we
   propose a new inductive algorithm for image annotation by integrating label correlation
   mining and visual similarity mining into a joint framework. We first construct a graph
   model according to image visual features. A multilabel classifier is then trained by
   simultaneously uncovering the shared structure common to different labels and the visual
   graph embedded label prediction matrix for image annotation. We show that the globally
   optimal solution of the proposed framework can be obtained by performing generalized
   eigen-decomposition. We apply the proposed framework to both web image annotation
   and personal album labeling using the NUS-WIDE, MSRA MM 2.0, and Kodak image
   data sets, and the AUC evaluation metric. Extensive experiments on large-scale image
   databases collected from the web and personal album show that the proposed algorithm is
   capable of utilizing both labeled and unlabeled data for image annotation and
   outperforms other algorithms.




  Your Own Ideas or Any project from any company can be Implemented
at Better price (All Projects can be done in Java or DotNet whichever the student wants)
                                                                                           1

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10

  • 1. Impulse Technologies Beacons U to World of technology 044-42133143, 98401 03301,9841091117 ieeeprojects@yahoo.com www.impulse.net.in Web-and-Personal-Image-Annotation-by-Mining-Label- Correlation-With-Relaxed-Visual-Graph-Embedding Abstract The number of digital images rapidly increases, and it becomes an important challenge to organize these resources effectively. As a way to facilitate image categorization and retrieval, automatic image annotation has received much research attention. Considering that there are a great number of unlabeled images available, it is beneficial to develop an effective mechanism to leverage unlabeled images for large- scale image annotation. Meanwhile, a single image is usually associated with multiple labels, which are inherently correlated to each other. A straightforward method of image annotation is to decompose the problem into multiple independent single-label problems, but this ignores the underlying correlations among different labels. In this paper, we propose a new inductive algorithm for image annotation by integrating label correlation mining and visual similarity mining into a joint framework. We first construct a graph model according to image visual features. A multilabel classifier is then trained by simultaneously uncovering the shared structure common to different labels and the visual graph embedded label prediction matrix for image annotation. We show that the globally optimal solution of the proposed framework can be obtained by performing generalized eigen-decomposition. We apply the proposed framework to both web image annotation and personal album labeling using the NUS-WIDE, MSRA MM 2.0, and Kodak image data sets, and the AUC evaluation metric. Extensive experiments on large-scale image databases collected from the web and personal album show that the proposed algorithm is capable of utilizing both labeled and unlabeled data for image annotation and outperforms other algorithms. Your Own Ideas or Any project from any company can be Implemented at Better price (All Projects can be done in Java or DotNet whichever the student wants) 1