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Partial AUC Optimization Based Deep Speaker Embeddings with Class-Center Learning for Text-Independent Speaker Verification

机译:基于部分AUC优化的基于Deep Speaker嵌入式与Courts-Center学习进行文本 - 无关的扬声器验证

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Deep embedding based text-independent speaker verification has demonstrated superior performance to traditional methods in many challenging scenarios. Its loss functions can be generally categorized into two classes, i.e., verification and identification. The verification loss functions match the pipeline of speaker verification, but their implementations are difficult. Thus, most state-of-the-art deep embedding methods use the identification loss functions with softmax output units or their variants. In this paper, we propose a verification loss function, named the maximization of partial area under the Receiver-operating-characteristic (ROC) curve (pAUC), for deep embedding based text-independent speaker verification. We also propose a class-center based training trial construction method to improve the training efficiency, which is critical for the proposed loss function to be comparable to the identification loss in performance. Experiments on the Speaker in the Wild (SITW) and NIST SRE 2016 datasets show that the proposed pAUC loss function is highly competitive with the state-of-the-art identification loss functions.
机译:基于深度嵌入的文本无关的扬声器验证已经对许多具有挑战性的情景中的传统方法表现出卓越的性能。它的损失函数通常可以分为两个类,即验证和识别。验证损失函数与扬声器验证的管道匹配,但它们的实现很困难。因此,大多数最先进的深度嵌入方法使用具有Softmax输出单元或其变体的识别丢失功能。在本文中,我们提出了一种验证损失函数,命名为接收器 - 操作特征(ROC)曲线(PAUC)下的部分区域的最大化,用于基于深度嵌入的文本无关的扬声器验证。我们还提出了一项基于中心的培训试验施工方法,提高了培训效率,这对于拟议的损失函数与表现鉴定损失相当至关重要。野生(SITW)和NIST SRE 2016数据集上的扬声器实验表明,所提出的PAUC损失功能对最先进的识别损失功能具有竞争力。

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