A Speech Recognition based Approach for Development in C++
نویسندگان
چکیده
Software development using programming languages requires keyboard for input and all programming languages are mostly text oriented. A person having brilliant mind and potential for programming skills, but suffering from RSIs or being disabled could not become a programmer. To be a good programmer a human must memorize the syntax and keywords of a programming language. In our research work we propose a methodology for C++ programming language where a programmer will speak and code in C++ will be written accordingly. Structure of special program constructs will also be created simultaneously.
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