Helmet and Number Plate Detection and Recognition Part-2

Описание к видео Helmet and Number Plate Detection and Recognition Part-2

Helmet Detection and Number Plate Extraction using Machine Learning

Helmet and Number Plate Detection and Recognition Project Description: In this project user can gave input Image, Video, Live Detection through laptop camera. When the user gave input image, first it will detect image and extract number from license plate, further it works same for video input. If the rider violates the rules then it will sent challan on registered mail.

Software Requirements :-
• Coding Language : Python
• Implementation: Software Framework.
• Operating system : Windows 10 / 11.
• Graphical User Interface : Tkinter

Hardware Requirement :-
• Input Devices : Keyboard, Mouse.
• System : Pentium i3 Processor.
• Hard Disk : 500 GB.
• Ram : 4 GB.

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