Convolutional neural networks (CNNs), such as the time-delay neural network (TDNN), have shown their remarkable capability in learning speaker embedding. However, they meanwhile bring a huge computational cost in storage size, processing, and memory. Discovering the specialized CNN that meets a specific constraint requires a substantial effort of human experts. Compared with hand-designed approaches, neural architecture search (NAS) appears as a practical technique in automating the manual architecture design process and has attracted increasing interest in spoken language processing tasks such as speaker recognition. In this paper, we propose EfficientTDNN, an efficient architecture search framework consisting of a TDNN-based supernet and a TDNN-NAS algorithm. The proposed supernet introduces temporal convolution of different ranges of the receptive field and feature aggregation of various resolutions from different layers to TDNN. On top of it, the TDNN-NAS algorithm quickly searches for the desired TDNN architecture via weight-sharing subnets, which surprisingly reduces computation while handling the vast number of devices with various resources requirements. Experimental results on the VoxCeleb dataset show the proposed EfficientTDNN enables approximate $10^{13}$ architectures concerning depth, kernel, and width. Considering different computation constraints, it achieves a 2.20% equal error rate (EER) with 204M multiply-accumulate operations (MACs), 1.41% EER with 571M MACs as well as 0.94% EER with 1.45G MACs. Comprehensive investigations suggest that the trained supernet generalizes subnets not sampled during training and obtains a favorable trade-off between accuracy and efficiency.
翻译:在本文中,我们建议高效的TDNNN,这是一个高效的架构搜索框架,由基于TDNNN的样本超级网络和TDNNN-NAS算法组成。拟议的超级网络引入了不同范围的开放字段的时间变换和不同层次的不同分辨率的特征集合到TDNNN。首先,TDNNN-NAS算法快速搜索所需的TDNNN架构架构架构,通过权重共享子网进行快速搜索,令人惊讶地减少了计算,同时处理大量具有不同资源要求的通用20种设备。VoxCeleb数据设置的实验结果显示,在5DNNNT4的样本超级网络超级网络和TDNNN-NAS算法中,以10-13的深度显示,不同范围的开放字段和从不同层到TDNNNNNM的各种分辨率组合。最重要的是,TDNNNN-NAS算法快速搜索所需的TDNNNNN架构,这令人惊讶地减少了计算,同时处理大量具有不同资源要求的装置。 VoxCeleb数据设置了一个有效的结构的实验性结果显示,以2-MMMLMLE的深度显示,以10-NE值计算法的精度计算,以1013的深度显示,以等的精度计算。