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Brain computer interface based robotic arm control

机译:基于脑计算机接口的机械手臂控制

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Brain computer interface (BCI) establishes a communication channel between a computer and a human brain which converts brain activity to control signals. With the advancement in research and technology, many BCI based rehabilitation devices have been developed to augment, support, and supplement human motion in a paralyzed or partially disabled person. This would help in developing a smart society where a disabled person will have the freedom to complete their day to day tasks. In the proposed experimental setup, brain signals are used to move the robotic arm and perform different tasks i.e., picking and placing. Electroencephalography (EEG) signals are recorded using a five-channel wearable headband. A total of five subjects voluntarily participated in the study, with an informed consent. The EEG data is recorded for a duration of twenty minutes for each participant, and eight different statistical features are extracted to detect clench and attention signals. Five different classifiers namely support vector machine, Naive Bayes, K-nearest neighbor, multilayer perceptron, and random forest are used. The results are compared in terms of accuracy and error parameters. The proposed method achieves significant results for smart robotic arm control.
机译:大脑计算机接口(BCI)在计算机和人脑之间建立通信通道,该通道将大脑活动转换为控制信号。随着研究和技术的进步,已经开发了许多基于BCI的康复设备,以增强,支持和补充瘫痪或部分残疾者的人体运动。这将有助于发展一个聪明的社会,使残疾人能够自由地完成其日常任务。在建议的实验设置中,大脑信号用于移动机械臂并执行不同的任务,即拾取和放置。脑电图(EEG)信号使用五通道可穿戴式头带记录。在知情同意的情况下,共有五名受试者自愿参加了该研究。为每个参与者记录20分钟的EEG数据,并提取八个不同的统计特征以检测握紧和注意信号。使用了五个不同的分类器,即支持向量机,朴素贝叶斯,K近邻,多层感知器和随机森林。比较结果的准确性和误差参数。所提出的方法在智能机器人手臂控制方面取得了显着效果。

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