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Prithviraj Hiremath
K Sai Tarun
Sowmya Sundari L K


– The purpose of this project is to detect, track and notify the intruding objects. The system will have a clear view of the surveillance area with a high pixel camera or a surveillance drone. The camera will be fixed in a position that the surveillance area is covered. It will identify interruption and perceive the object by contrasting its features with the features of the objects that are stored in the database.If a feature matches the intruding object,then it will get tracked and will notify the authorities. Thus, the image will be captured, proceed and the authorities can take actions necessary. The above system will work as a detection, recognition and alertthe intrusion which will be of great use for Military applications. Our system ensures low execution time.


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