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Optimized Acoustic Likelihoods Computation for NVIDIA and ATI/AMD Graphics Processors

机译:NVIDIA和ATI / AMD图形处理器的优化声学似然计算

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In this paper, we describe an optimized version of a Gaussian-mixture-based acoustic model likelihood evaluation algorithm for graphical processing units (GPUs). The evaluation of these likelihoods is one of the most computationally intensive parts of automatic speech recognizers, but it can be parallelized and offloaded to GPU devices. Our approach offers a significant speed-up over the recently published approaches, because it utilizes the GPU architecture in a more effective manner. All the recent implementations have been intended only for NVIDIA graphics processors, programmed either in CUDA or OpenCL GPU programming frameworks. We present results for both CUDA and OpenCL. Further, we have developed an OpenCL implementation optimized for ATI/AMD GPUs. Results suggest that even very large acoustic models can be used in real-time speech recognition engines on computers equipped with a low-end GPU or laptops. In addition, the completely asynchronous GPU management provides additional CPU resources for the decoder part of the LVCSR. The optimized implementation enables us to apply fusion techniques together with evaluating many (10 or even more) speaker-specific acoustic models. We apply this technique to a real-time parliamentary speech recognition system where the speaker changes frequently.
机译:在本文中,我们描述了用于图形处理单元(GPU)的基于高斯混合的声学模型似然评估算法的优化版本。对这些可能性的评估是自动语音识别器中计算量最大的部分之一,但可以并行化并卸载到GPU设备。我们的方法比最近发布的方法有明显的提速,因为它以更有效的方式利用了GPU体系结构。所有最近的实现方式仅适用于在CUDA或OpenCL GPU编程框架中编程的NVIDIA图形处理器。我们展示了CUDA和OpenCL的结果。此外,我们已经开发了针对ATI / AMD GPU优化的OpenCL实现。结果表明,即使是非常大的声学模型,也可以在配备低端GPU或笔记本电脑的计算机上的实时语音识别引擎中使用。此外,完全异步的GPU管理为LVCSR的解码器部分提供了额外的CPU资源。优化的实现使我们能够将融合技术与评估许多(10个甚至更多)扬声器特定的声学模型一起应用。我们将此技术应用于演讲者经常更换的实时议会语音识别系统。

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