Misura statistica di g lungo y Progetto Mobile smartphone Controlla la distribuzione statistica dei dati del sensore. Questo esperimento mostra semplicemente i dati grezzi dal sensore in un istogramma, che dovrebbe formare una distribuzione gaussiana quando il dispositivo è a riposo. A seconda del rumore del sensore, potresti voler modificare la dimensione del binning. 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