Automatic Recognition of Object Detection Using Matlab

نویسندگان

  • A. Anitha
  • J. Gayatri
چکیده

Monitoring military, conflicts, illegal immigrants etc. areas rely currently on technology and man power, however automatic monitoring has been advancing in order to avoid potential human errors that can be caused by different reasons. This introduces an automatic recognition of object, which uses image processing to detect and extract moving objects within a restricted area, and a neural network to recognize the extracted object. Experimental results provides a simple, efficient and fast solution to the problem of detecting, extracting and recognizing moving objects within one system.

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تاریخ انتشار 2013