AI BASED AUTOMATIC MARK ENTRY SYSTEM

An automatic mark entry system is a computer based system that automatically captures marks or grades from various sources and stores them in a database. The system is designed to automate the process of entering marks or grades for students, eliminating the need for manual entry, and reducing the chances of errors. OCR-based systems use image processing techniques to automatically recognize and extract marks or grades from scanned documents, such as exam answer sheets or report cards. By automating the process of entering marks or grades, teachers and administrators can focus on other important tasks, such as teaching and providing feedback to students. A webcam is used to capture the marks in answer sheets of all the students and the data is transferred into an Excel sheet automatically. Automatic mark entry systems not only save time and reduce errors but also provide real-time access to the data, allowing teachers and administrators to quickly analyze and evaluate the performance of students.

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