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Voice Control of a Robotic Arm for Hysterectomy and Its Optimal Pivot Selection

机译:子宫切除机器人手臂的语音控制及其最佳枢轴选择

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This paper presents a method to recognize the voice command which is using for control a rbototic arm for hysterectomy. We extract MFCCs (Mel Frequency Cepstrum Coefficients) characteristic parameters as the original input, then put it into the CNNs (Convolutional Neural Networks) model after specific processing. After obtain the speech recognition model, we input the voice of command generate by a operator and then it would predicted a voice command and take corresponding action on robot. The plantform we used to verify our model is a 6-DOF manipulator. In order to promote maneuverability of this robot, we adopt a method to optimize the selection of Remote Center of Motion (RCM). Experiments show that this speech recognition meodel based on CNNs is fulfill the requirment of surgery and controling robot by its command is feasible.
机译:本文提出了一种识别语音命令的方法,该方法用于控制子宫切除术的机器人手臂。我们提取MFCC(梅尔频率倒谱系数)特征参数作为原始输入,然后经过特定处理将其放入CNN(卷积神经网络)模型中。在获得语音识别模型后,我们输入操作员生成的命令语音,然后它将预测语音命令并对机器人采取相应的措施。我们用来验证模型的工厂形式是6自由度操纵器。为了提高该机器人的可操作性,我们采用了一种方法来优化远程运动中心(RCM)的选择。实验表明,该基于CNN的语音识别方法能够满足手术要求,通过其指令控制机器人是可行的。

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