Voice Activation Using Speaker Recognition for Controlling Humanoid Robot

Dyah Ayu Anggreini Tuasikal, Hanif Fakhrurroja, C. Machbub
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引用次数: 5

Abstract

Voice activation and speaker recognition are needed in many applications today. Speaker recognition is the process of automatically recognizing who speaks based on the voice signal. The introduction of these speakers is generally required on systems that use security and privacy. One example of this paper application is for activation and security in controlling humanoid robots. Voice recording process using Kinect 2.0. The first step in the speech recognition process is feature extraction. In this paper use Mel Frequency Cepstrum Coefficient (MFCC) on characteristic extraction process and Dynamic Time Warping (DTW) used as feature matching technique. The test was performed by 5 different speakers, with 2 types of words (“aktifkan” means activate and “hello slim”), and test with different recording distance (0.5m, 2m, 4m). Robot activation using two different types of words has an average accuracy of 91.5%. At the next difficulty level for testing the recording distance accuracy decreased from 97.5% to 85% to 65%.
基于说话人识别的语音激活控制类人机器人
语音激活和说话人识别在当今的许多应用中都是必需的。说话人识别是根据语音信号自动识别说话人的过程。在使用安全和隐私的系统中,通常需要引入这些扬声器。本文应用的一个例子是人形机器人的激活和安全控制。录音过程使用Kinect 2.0。语音识别过程的第一步是特征提取。本文将Mel频率倒谱系数(MFCC)用于特征提取过程,动态时间翘曲(DTW)用于特征匹配技术。测试由5名不同的说话者进行,使用2种类型的单词(“aktifkan”表示激活,“hello slim”表示苗条),并以不同的记录距离(0.5m, 2m, 4m)进行测试。使用两种不同类型的单词激活机器人的平均准确率为91.5%。在测试的下一个难度级别,记录距离精度从97.5%下降到85%到65%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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