AUTOMATIC IMAGE ANNOTATION USING WEAKLY SUPERVISED GRAPH PROPAGATION 

Abstract

Weakly supervised graph propagation is a method to automatically assign the annotated labels to semantically derived a semantic region. Inputs given are, the training images directory, the labels which are pre-assigned, and the Input Image .In this section, the graph Construction is done with the help of two types of relationships. Consistency Relationship mining, Incongruity Relationship mining. Propagate image labels from patches. The factors needed to be considered are, Patch Label Self-Constraints. Patch–Patch Contextual Relationships, ImagePatch Inclusion Supervision, the supervisions are the supervised and un supervised technique.Weakly supervised graph propagation is a method to automatically assign the annotated labels to semantically derived a semantic region. Inputs given are, the training images directory, the labels which are pre-assigned, and the Input Image .In this section, the graph Construction is done with the help of two types of relationships. Consistency Relationship mining, Incongruity Relationship mining. Propagate image labels from patches. The factors needed to be considered are, Patch Label Self-Constraints. Patch–Patch Contextual Relationships, ImagePatch Inclusion Supervision, the supervisions are the supervised and un supervised technique.Weakly supervised graph propagation is a method to automatically assign the annotated labels to semantically derived a semantic region. Inputs given are, the training images directory, the labels which are pre-assigned, and the Input Image .In this section, the graph Construction is done with the help of two types of relationships. Consistency Relationship mining, Incongruity Relationship mining. Propagate image labels from patches. The factors needed to be considered are, Patch Label Self-Constraints. Patch–Patch Contextual Relationships, ImagePatch Inclusion Supervision, the supervisions are the supervised and un supervised technique.Weakly supervised graph propagation is a method to automatically assign the annotated labels to semantically derived a semantic region. Inputs given are, the training images directory, the labels which are pre-assigned, and the Input Image .In this section, the graph Construction is done with the help of two types of relationships. Consistency Relationship mining, Incongruity Relationship mining. Propagate image labels from patches. The factors needed to be considered are, Patch Label Self-Constraints. Patch–Patch Contextual Relationships, ImagePatch Inclusion Supervision, the supervisions are the supervised and un supervised technique. 

Authors and Affiliations

Kalaivani. R , Thamaraiselvi. K

Keywords

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  • EP ID EP125820
  • DOI -
  • Views 94
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How To Cite

Kalaivani. R, Thamaraiselvi. K (2013). AUTOMATIC IMAGE ANNOTATION USING WEAKLY SUPERVISED GRAPH PROPAGATION . International Journal of Advanced Research in Computer Engineering & Technology(IJARCET), 2(2), 855-860. https://europub.co.uk/articles/-A-125820