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Detection of Large Segmentation Errors with Score Predictive Model

机译:用得分预测模型检测大分割错误

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This paper investigates a possibility of an utilization of regressive score predictive model (SPM) in a process of detection of large segmentation errors. SPM's scores of automatically marked boundaries between all speech segments are examined and further elaborated in an effort to discover the best threshold to distinguish between small and large errors. It was shown that the suggested detection method with a proper threshold can be used to detect all large errors for a specific type of a boundary.
机译:本文研究了在检测大型细分错误的过程中利用回归评分预测模型(SPM)的可能性。检查并进一步完善了SPM在所有语音段之间自动标记的边界分数,以发现区分小错误和大错误的最佳阈值。结果表明,建议的具有适当阈值的检测方法可用于检测特定类型边界的所有大错误。

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