Classification of magnetic resonance brain images using bi-dimensional empirical mode decomposition and autoregressive model
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Ram Bilas Pachori | Vivek Kanhangad | Omkishor Sahu | Vijay Anand | R. B. Pachori | V. Anand | Vivek Kanhangad | O. Sahu
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