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A sampling-based environment population projection approach for rapid acoustic model adaptation

机译:基于样本的环境人口预测方法,用于快速声学模型自适应

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We propose an environment population projection (EPP) approach for rapid acoustic model adaptation to reduce environment mismatches with limited amounts of adaptation data. This approach consists of two stages: population construction and projection. In the population construction stage, we apply a sampling scheme on the adaptation data to construct an environment population based on acoustic models prepared in the training phase. With this sampling procedure, the environment samples in the population characterize diverse acoustic information embedded in the adaptation data. Next, the projection stage estimates a function to map the environment population into one set of acoustic models that matches the testing condition. With a well-constructed environment population, a simple projection function can enable the EPP approach to accurately characterize the testing environment even with a small amount of adaptation data. To examine the rapid adaptation ability of EPP, we used only one adaptation utterance and tested performance in both supervised and unsupervised adaptation modes on Aurora-2 and Aurora-2J tasks. It is found that EPP achieves satisfactory performance under both modes for both tasks. On the Aurora-2J task, for example, EPP gives a clear improvement of a 13.87% (8.58% to 7.39%) word error rate (WER) reduction over our baseline in the unsupervised adaptation mode.
机译:我们提出了一种用于快速声学模型自适应的环境人口预测(EPP)方法,以减少有限量的自适应数据带来的环境失配。这种方法包括两个阶段:人口建设和预测。在种群构建阶段,我们将对适应数据应用抽样方案,以根据训练阶段准备的声学模型构建环境种群。通过这种采样程序,种群中的环境采样可以表征嵌入在适应数据中的各种声学信息。接下来,投影阶段估计一个将环境种群映射到与测试条件匹配的一组声学模型中的功能。对于结构良好的环境总体,即使使用少量的适应数据,简单的投影功能也可以使EPP方法准确地表征测试环境。为了检查EPP的快速适应能力,我们仅使用一种适应性话语,并在Aurora-2和Aurora-2J任务的有监督和无监督适应模式下测试了性能。发现在两种模式下,EPP都能在两种任务下实现令人满意的性能。例如,在Aurora-2J任务上,EPP在无监督自适应模式下比我们的基线明显降低了13.87%(8.58%至7.39%)的字错误率(WER)。

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