Voice Command Recognition for Movement Control of a 4-DoF Robot Arm

Rendyansyah Rendyansyah, Aditya P. P. Prasetyo, Sarmayanta Sembiring
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引用次数: 1

Abstract

Robots are widely used in industry. Robots generally have a control system or intelligence embedded in the processor. The robots consist of mobile mode, manipulator, and their combination. Mobile robots usually use wheels, and manipulator robots have limited degrees of freedom. Both have their respective advantages. Mobile robots are widely applied to environments with flat floor surfaces. The manipulator robots are applied to a static environment to produce, print, and cut material. In this study, the robot arm 4 Degree of Freedom (DoF) is integrated with a computer. The computer controls the whole system, where the operator can control the Robot based on voice commands. The operator's voice is one person only with different intonations. Voice command recognition uses the Mel-Frequency Cepstral Coefficients (MFCC) and Artificial Neural Networks (ANN) methods. The MFCC and ANN programs are processed in the computer, and the program output is sent to the Robot via serial communication. There are nine types of voice commands with different MFCC patterns. ANN training data for each command is 10 data, so the total becomes 90. In this experiment, the Robot can move according to voice commands given by the operator. Tests for each voice command are ten experiments, so the total experiment is 90 times with a success rate of 94%. There is only one operator, and experiments have not yet been carried out with the voices of several operators. The error occurred because there were several similar patterns during system testing.
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语音指令识别在四自由度机械臂运动控制中的应用
机器人广泛应用于工业。机器人通常在处理器中嵌入控制系统或智能。机器人由移动模式、机械手及其组合组成。移动机器人通常使用轮子,而机械手机器人的自由度有限。两者都有各自的优势。移动机器人广泛应用于地面平坦的环境。机械手机器人应用于静态环境中进行材料的生产、打印和切割。在本研究中,机器人手臂4自由度(DoF)与计算机集成。计算机控制整个系统,操作员可以根据语音命令控制机器人。接线员的声音只有一个人,语调不同。语音命令识别采用了Mel-Frequency倒谱系数(MFCC)和人工神经网络(ANN)方法。在计算机中处理MFCC和ANN程序,并将程序输出通过串行通信发送给机器人。有九种不同MFCC模式的语音命令。每个命令的ANN训练数据为10个数据,因此总数为90。在这个实验中,机器人可以根据操作员发出的语音命令移动。每条语音指令测试10次,总共90次,成功率94%。只有一名操作员,并且还没有用几个操作员的声音进行实验。发生错误是因为在系统测试期间有几个类似的模式。
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