This letter proposes a new wake word detection system based on Res2Net. As a variant of ResNet, Res2Net was first applied to objection detection. Res2Net realizes multiple feature scales by increasing possible receptive fields. This multiple scaling mechanism significantly improves the detection ability of wake words with different durations. Compared with the ResNet-based model, Res2Net also significantly reduces the model size and is more suitable for detecting wake words. The proposed system can determine the positions of wake words from the audio stream without any additional assistance. The proposed method is verified on the Mobvoi dataset containing two wake words. At a false alarm rate of 0.5 per hour, the system reduced the false rejection of the two wake words by more than 12% over prior works.
翻译:此信基于 Res2Net 提出了一个新的醒醒字检测系统。 作为ResNet 的变种,Res2Net 最初应用到反对检测中。 Res2Net 通过增加可能的可接收字段, 实现了多重功能尺度。 这个多重缩放机制大大提高了不同期限的觉醒字的检测能力。 与 ResNet 模型相比, Res2Net 也大大缩小了模型大小, 更适合检测醒字。 拟议系统可以在没有任何额外帮助的情况下确定音频流中醒醒字的位置。 在包含两个醒词的 Mobvoi 数据集上验证了拟议方法。 以每小时0. 5 的虚假提醒速度, 该系统将两个醒字的虚假拒绝率比先前的工程减少12%以上 。