Low Dimensional Relevance Coding for Personalized Tag Recommendation in Image Tagging Applications

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Anupama Ganesh Phakatkar

Abstract

An approach of image coding for tag recommendation based on feature clustering and weighted coding is presented in this paper. The existing tag recommendation approach develops a decision based on correlation of image features and their tag annotated. The descriptive feature of the image sample defines the content of an image and is correlated with database features for tag recommendation. The feature dimension and its representation have a greater impact on the recommendation performance. The recent method tag recommendation developed CNN based visual features and proposed a tag recommendation based on weight factor. The dimensional feature and the isolated weight allocation limit the performance of presented tag recommendation system. This paper presents a new weight allocation and feature clustering method for tag recommendation. An approach of integral coding for weighted image-tag is presented to improve recommendation accuracy. The proposed recommendation system performance is tested on Flickr dataset for retrieval and recommendation accuracy.

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How to Cite
Anupama Ganesh Phakatkar, A. G. P. (2023). Low Dimensional Relevance Coding for Personalized Tag Recommendation in Image Tagging Applications. International Journal on Recent and Innovation Trends in Computing and Communication, 11(9), 4172–4178. https://doi.org/10.17762/ijritcc.v11i9.9785
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Articles