首页> 外文会议>IEEE International Conference on Acoustics, Speech and Signal Processing >INVESTIGATING LABEL NOISE SENSITIVITY OF CONVOLUTIONAL NEURAL NETWORKS FOR FINE GRAINED AUDIO SIGNAL LABELLING
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INVESTIGATING LABEL NOISE SENSITIVITY OF CONVOLUTIONAL NEURAL NETWORKS FOR FINE GRAINED AUDIO SIGNAL LABELLING

机译:调查卷积神经网络的标签噪声敏感性,用于细粒度音频信号标记

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We measure the effect of small amounts of systematic and random label noise caused by slightly misaligned ground truth labels in a fine grained audio signal labeling task. The task we choose to demonstrate these effects on is also known as framewise polyphonic transcription or note quantized multi-f0 estimation, and transforms a monaural audio signal into a sequence of note indicator labels. It will be shown that even slight misalignments have clearly apparent effects, demonstrating a great sensitivity of convolutional neural networks to label noise. The implications are clear: when using convolutional neural networks for fine grained audio signal labeling tasks, great care has to be taken to ensure that the annotations have precise timing, and are free from systematic or random error as much as possible - even small misalignments will have a noticeable impact.
机译:我们测量少量系统和随机标签噪声的效果在细粒度的音频信号标记任务中略微未对齐的地面真实标签引起的。我们选择展示这些效果的任务也称为框架的多相转录或音符量化的多F0估计,并将单声道音频信号转换为一系列音符指示器标签。结果表明,即使轻微的错位也明显明显效果,展示了卷积神经网络对标签噪声的良好敏感性。含义很清楚:当使用卷积神经网络进行细粒度的音频信号标记任务时,必须谨慎地确保注释具有精确的时机,并且没有尽可能多的系统或随机误差 - 即使是小的错位也会有一个明显的影响。

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