Multimedia data mining: state of the art and challenges

@article{Bhatt2010MultimediaDM,
  title={Multimedia data mining: state of the art and challenges},
  author={Chidansh Amitkumar Bhatt and Mohan S. Kankanhalli},
  journal={Multimedia Tools and Applications},
  year={2010},
  volume={51},
  pages={35-76}
}
Advances in multimedia data acquisition and storage technology have led to the growth of very large multimedia databases. Analyzing this huge amount of multimedia data to discover useful knowledge is a challenging problem. This challenge has opened the opportunity for research in Multimedia Data Mining (MDM). Multimedia data mining can be defined as the process of finding interesting patterns from media data such as audio, video, image and text that are not ordinarily accessible by basic… CONTINUE READING

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