Performance analysis of different audio with raga Yaman

Nowadays, a large literature is available on comparative study of various musical genres, styles and traditions. In this paper, different samples of Raga Yaman of a variety of vocalists in North Indian classical music have been considered. The initial part presents the identification of any variation among the four music patterns, where these variations are presented by the features such as temporal length, RMS energy, low energy, tempo, pulse clarity, rolloff and inharmonicity. A comparative study of extracting features of Raga presented by different singers is evaluated scientifically by using MIR Toolbox.

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