The computer and its multimedia have facilitated to change the world of art these days. A human being need not necessarily play the sweet music from the violin or saxophone any more, as we can easily exchange these sounds in our personal computer. Normally they are represented as .au /.wav /.mid file. The work is focused on midi depiction of music. Midi has its own format. While you play a midi file, there will be an instrument playing in it. The work finds out the instrument name from a midi file that is being played. It also aims at getting the information such as velocity change, key pressure, and note on, note off events. All these information’s are retrieved from the midi file format. The instrument name is finally extracted fromit.
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