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

Related Articles

Query Optimization: Finding the Optimal Execution Strategy 

The query optimizer is the component of a database management system that attempts to determine the most efficient way to execute a query. The optimizer considers the possible query plans for a given input query, a...

A 5 level, 3 phase H-bridge PWM method for I.M. Controlling with field oriented techniques  

This paper presents a micro controller based field oriented control 5-level inverter for three phase Induction motor. IGBT is used as power element. Pulse width modulation techniques (PWM), introduced three decad...

IMAGE SEGMENTATION TECHNIQUES AND GENETIC ALGORITHM

Image Segmentation is a decomposition of scene into its components. It is a key step in analysis. Edge, point, line, boundary texture and region detection are the various forms of image segmentation. Various technolog...

A Proposal of Image Arrangement CAPTCHA  

A CAPTCHA is a technique that is used to prevent automated programs from being able to acquire free e-mail or online service accounts. However, as many researchers have already reported, conventional CAPTCHAs could...

Survey on Improving the Performance of Web by Evaluation of Web Prefetching and Caching Algorithms  

Web caching and prefetching have been studied in the past separately. In this paper, we present an integrated architecture for Web object caching and prefetching. Our goal is to design a prefetching system that c...

Download PDF file
  • EP ID EP125820
  • DOI -
  • Views 116
  • Downloads 0

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