基于机器学习的普适计算脑电信号疾病自动检测与分类

U. Rajashekhar, Neelappa, M. HarishH.
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This scenario, in reality, creates in a degree of incapacity on the part of the wheelchair user in terms of performing simple activities. Based on their specific medical needs, confined patients are treated in a modified method. Independent navigation is secured for individuals with vision and motor disabilities. There is a necessity for communication which justifies the use of VR in this navigation situation. For the effective integration of locomotion besides, it must be under natural guidance. EEG, which uses random brain impulses, has made significant progress in the field of health. The custom of an automated audio announcement system modified to have the help of VR and EEG for the training of locomotion and individualized interaction of wheelchair users with visual disability is demonstrated in this study through an experiment. Enabling the patients who were otherwise deemed incapacitated to participate in social activities, as the aim was to have efficient connections.\n\n\nFindings\nTo protect their life straightaway and to report all these disputes, the military system should have high speed, more precise portable prototype device for nursing the soldier health, recognition of solider location and report about health sharing system to the concerned system. Field programmable gate array (FPGA)-based soldier’s health observing and position gratitude system is proposed in this paper. Reliant on heart rate which is centered on EEG signals, the soldier’s health is observed on systematic bases. By emerging Verilog hardware description language (HDL) programming language and executing on Artix-7 development FPGA board of part name XC7ACSG100t the whole work is approved in a Vivado Design Suite. Classification of different abnormalities and cloud storage of EEG along with the type of abnormalities, artifact elimination, abnormalities identification based on feature extraction, exist in the segment of suggested architecture. Irregularity circumstances are noticed through developed prototype system and alert the physically challenged (PHC) individual via an audio announcement. An actual method for eradicating motion artifacts from EEG signals that have anomalies in the PHC person’s brain has been established, and the established system is a portable device that can deliver differences in brain signal variation intensity. Primarily the EEG signals can be taken and the undesirable artifact can be detached, later structures can be mined by discrete wavelet transform these are the two stages through which artifact deletion can be completed. The anomalies in signal can be noticed and recognized by using machine learning algorithms known as multirate support vector machine classifiers when the features have been extracted using a combination of hidden Markov model (HMM) and Gaussian mixture model (GMM). Intended for capable declaration about action taken by a blind person, these result signals are protected in storage devices and conveyed to the controller. Pretending daily motion schedules allows the pretentious EEG signals to be caught. Aimed at the validation of planned system, the database can be used and continued with numerous recorded signals of EEG. The projected strategy executes better in terms of re-storing theta, delta, alpha and beta complexes of the original EEG with less alteration and a higher signal to noise ratio (SNR) value of the EEG signal, which illustrates in the quantitative analysis. The projected method used Verilog HDL and MATLAB software for both formation and authorization of results to yield improved results. Since from the achieved results, it is initiated that 32% enhancement in SNR, 14% in mean squared error (MSE) and 65% enhancement in recognition of anomalies, hence design is effectively certified and proved for standard EEG signals data sets on FPGA.\n\n\nOriginality/value\nThe proposed system can be used in military applications as it is high speed and excellent precise in terms of identification of abnormality, the developed system is portable and very precise. FPGA-based soldier’s health observing and position gratitude system is proposed in this paper. Reliant on heart rate which is centered on EEG signals the soldier health is observed in systematic bases. The proposed system is developed using Verilog HDL programming language and executing on Artix-7 development FPGA board of part name XC7ACSG100t and synthesised using in Vivado Design Suite software tool.\n","PeriodicalId":210948,"journal":{"name":"Int. J. Pervasive Comput. Commun.","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2022-01-26","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"2","resultStr":"{\"title\":\"Automatic diseases detection and classification of EEG signal with pervasive computing using machine learning\",\"authors\":\"U. Rajashekhar, Neelappa, M. HarishH.\",\"doi\":\"10.1108/ijpcc-09-2021-0216\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"\\nPurpose\\nThe natural control, feedback, stimuli and protection of these subsequent principles founded this project. 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引用次数: 2

摘要

这些后续原则的自然控制、反馈、刺激和保护建立了这个项目。通过适当的实验,建立了一个结合自然交互和脑电图辅助的多层计算机康复系统,实现了虚拟环境和真实轮椅的运动。针对盲人轮椅操作患者,本文阐述了正确的方法。在教育盲人轮椅使用者的生命价值和独立性方面,研究结果证明,带有脑电图信号的虚拟现实(VR)具有这种潜力。设计/方法/方法个人面临着许多障碍的挑战,特别是当多种功能障碍被诊断出来时,尤其是对视力受损的轮椅使用者。实际上,这种情况在一定程度上造成了轮椅使用者在进行简单活动方面的丧失能力。根据病人的特殊医疗需要,用一种改良的方法治疗禁闭病人。有视力和运动障碍的人可以独立导航。有必要进行交流,这证明在这种导航情况下使用VR是合理的。此外,运动的有效整合必须在自然的引导下进行。脑电图利用随机脑脉冲,在健康领域取得了重大进展。本研究通过实验验证了一种经过VR和EEG技术改造的自动音频广播系统对视觉障碍轮椅使用者运动和个性化互动的训练。使那些被认为是无行为能力的病人能够参与社会活动,因为目的是建立有效的联系。为了保护士兵的生命安全,及时报告这些纠纷,军事系统应该有高速、更精确的便携式士兵健康护理原型装置,识别士兵的位置,并将健康共享系统报告给有关系统。提出了一种基于现场可编程门阵列(FPGA)的士兵健康观测与位置感激系统。依靠以脑电图信号为中心的心率,可以系统地观察士兵的健康状况。通过新兴的Verilog硬件描述语言(HDL)编程语言,在部件名称为XC7ACSG100t的Artix-7开发FPGA板上执行,整个工作在Vivado Design Suite中完成。在建议架构的分段中存在不同异常的分类和脑电图的云存储以及异常类型、伪影消除、基于特征提取的异常识别。通过开发的原型系统可以注意到不正常的情况,并通过音频通知提醒身体障碍(PHC)个人。建立了一种消除PHC患者大脑异常脑电图信号中运动伪影的实际方法,所建立的系统是一种可以传递脑信号变化强度差异的便携式设备。首先提取脑电信号,去除不需要的伪信号,然后通过离散小波变换挖掘结构,这是完成伪信号删除的两个阶段。当使用隐马尔可夫模型(HMM)和高斯混合模型(GMM)结合提取特征时,可以使用称为多速率支持向量机分类器的机器学习算法来注意和识别信号中的异常。这些结果信号在存储设备中受到保护并传送给控制器,用于对盲人所采取的行动进行有能力的声明。假装每天的运动时间表可以让假装的脑电图信号被捕捉到。针对计划系统的验证,该数据库可与大量记录的脑电图信号一起使用和延续。定量分析表明,投影策略在恢复原始脑电信号的theta、delta、alpha和beta复核方面表现较好,且改变较少,脑电信号信噪比较高。投影法采用Verilog HDL和MATLAB软件进行结果的生成和授权,提高了结果的准确性。由于所取得的结果表明,信噪比提高32%,均方误差(MSE)提高14%,异常识别提高65%,因此在FPGA上对标准脑电信号数据集的设计进行了有效的验证和验证。该系统在异常识别方面具有速度快、精度高的特点,可用于军事应用。提出了一种基于fpga的士兵健康观察与位置感激系统。
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Automatic diseases detection and classification of EEG signal with pervasive computing using machine learning
Purpose The natural control, feedback, stimuli and protection of these subsequent principles founded this project. Via properly conducted experiments, a multilayer computer rehabilitation system was created that integrated natural interaction assisted by electroencephalogram (EEG), which enabled the movements in the virtual environment and real wheelchair. For blind wheelchair operator patients, this paper involved of expounding the proper methodology. For educating the value of life and independence of blind wheelchair users, outcomes have proven that virtual reality (VR) with EEG signals has that potential. Design/methodology/approach Individuals face numerous challenges with many disorders, particularly when multiple dysfunctions are diagnosed and especially for visually effected wheelchair users. This scenario, in reality, creates in a degree of incapacity on the part of the wheelchair user in terms of performing simple activities. Based on their specific medical needs, confined patients are treated in a modified method. Independent navigation is secured for individuals with vision and motor disabilities. There is a necessity for communication which justifies the use of VR in this navigation situation. For the effective integration of locomotion besides, it must be under natural guidance. EEG, which uses random brain impulses, has made significant progress in the field of health. The custom of an automated audio announcement system modified to have the help of VR and EEG for the training of locomotion and individualized interaction of wheelchair users with visual disability is demonstrated in this study through an experiment. Enabling the patients who were otherwise deemed incapacitated to participate in social activities, as the aim was to have efficient connections. Findings To protect their life straightaway and to report all these disputes, the military system should have high speed, more precise portable prototype device for nursing the soldier health, recognition of solider location and report about health sharing system to the concerned system. Field programmable gate array (FPGA)-based soldier’s health observing and position gratitude system is proposed in this paper. Reliant on heart rate which is centered on EEG signals, the soldier’s health is observed on systematic bases. By emerging Verilog hardware description language (HDL) programming language and executing on Artix-7 development FPGA board of part name XC7ACSG100t the whole work is approved in a Vivado Design Suite. Classification of different abnormalities and cloud storage of EEG along with the type of abnormalities, artifact elimination, abnormalities identification based on feature extraction, exist in the segment of suggested architecture. Irregularity circumstances are noticed through developed prototype system and alert the physically challenged (PHC) individual via an audio announcement. An actual method for eradicating motion artifacts from EEG signals that have anomalies in the PHC person’s brain has been established, and the established system is a portable device that can deliver differences in brain signal variation intensity. Primarily the EEG signals can be taken and the undesirable artifact can be detached, later structures can be mined by discrete wavelet transform these are the two stages through which artifact deletion can be completed. The anomalies in signal can be noticed and recognized by using machine learning algorithms known as multirate support vector machine classifiers when the features have been extracted using a combination of hidden Markov model (HMM) and Gaussian mixture model (GMM). Intended for capable declaration about action taken by a blind person, these result signals are protected in storage devices and conveyed to the controller. Pretending daily motion schedules allows the pretentious EEG signals to be caught. Aimed at the validation of planned system, the database can be used and continued with numerous recorded signals of EEG. The projected strategy executes better in terms of re-storing theta, delta, alpha and beta complexes of the original EEG with less alteration and a higher signal to noise ratio (SNR) value of the EEG signal, which illustrates in the quantitative analysis. The projected method used Verilog HDL and MATLAB software for both formation and authorization of results to yield improved results. Since from the achieved results, it is initiated that 32% enhancement in SNR, 14% in mean squared error (MSE) and 65% enhancement in recognition of anomalies, hence design is effectively certified and proved for standard EEG signals data sets on FPGA. Originality/value The proposed system can be used in military applications as it is high speed and excellent precise in terms of identification of abnormality, the developed system is portable and very precise. FPGA-based soldier’s health observing and position gratitude system is proposed in this paper. Reliant on heart rate which is centered on EEG signals the soldier health is observed in systematic bases. The proposed system is developed using Verilog HDL programming language and executing on Artix-7 development FPGA board of part name XC7ACSG100t and synthesised using in Vivado Design Suite software tool.
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