Abstract
Since rapid growth of Internet technologies and mobile devices, multimedia data such as images and videos are explosively growing on the Internet. Managing large scale multimedia data with correct tags and annotations is very important task. Incorrect tags and annotations make it hard to manage multimedia data. Accurate tags and annotation ease management of multimedia data and give high quality retrieve results. Fully manual image tagging which is tagged by user will be most accurate tags when the user tags correct information. Nevertheless, most of users do not make effort on task of tagging. Therefore, we suffer from lots of noisy tags. Best solution for accurate image tagging is to tag image automatically. Robust automatic image tagging models are proposed by many researchers and it is still most interesting research field these days. Since there are still lots of limitations in automatic image tagging models, we propose efficient automatic image tagging model using multigrid based image segmentation and feature extraction method. Our model can improve the object descriptions of images and image regions. Our method is tested with Corel dataset and the result showed that our model performance is efficient and effective compared to other models.
Highlights
We focus on automatic image tagging model using image segmentation and feature extraction
We proposed an automatic image tagging model based on our multigrid image segmentation method
Since segmented image may contain multiple objects, we proposed multigrid image segmentation method
Summary
It is very easy to share multimedia data with our mobile devices and explosive growth of social network services such as Facebook, Flickr, and Twitter helps with tremendous growth of multimedia data on the Internet To manage these multimedia data, reliable tag and annotation information should be improved. Feng et al [1] proposed grid based method which is more effective than the basic image segmentation models. It still has limitation for multiobject problem in segmented region. We propose a multigrid image segmentation method which is able to extract features of multiobjects presented in an image.
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have