A Survey on Low Level Feature Identification of Satellite Images and Knowledge Discovery from Identified Features using Image Mining

نویسندگان

  • Sourabh Jain
  • Ankita Jain
  • Mukta Bhatele
  • B. L. Rai
چکیده

Abstract—Image mining is a used to mining the images for the extraction of knowledge. Different types of satellite images contain earlier prediction of forecasting weather & their important information. Several works has been done on Satellite image mining, databases are used to store the images & query image technique is used to retrieve the images. The technique used Content Based Image Retrieval [CBIR] for the feature extraction & image retrieval from the image. The CBIR extracted laver of cloud, high pressure, etc. from Satellite Images contain more information High Cloud, Low Cloud, Thick Cloud and Thin Cloud which can be extracted knowledge efficiently in a proper manner & to discover knowledge technique of association rule is applied. It uses low level feature to extraction information and discovering knowledge from this feature using Mining Rule.

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تاریخ انتشار 2015