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RNN LSTM-based emotion recognition using EEG signals 基于RNN lstm的脑电信号情感识别
Pub Date : 1900-01-01 DOI: 10.26634/jaim.1.1.19112
Devi C. Akalya, Renuka D. Karthika, L. R. Abishek, A. Kaaviya, R. L. Prediksha, M. Yaswanth
Emotion, a representation of the human state of mind, plays an important role in day-to-day human life and helps one make good decisions. A typical way to understand human emotion is by observing a person's facial expressions and modulation of speech, and it can be categorized as sad, angry, happy, fearful, and so on. Emotion recognition using Brain Computer Interface (BCI) systems is beneficial for patients suffering from paralysis, autism, and mental retardation who cannot express their emotions like regular people. In this paper, after analyzing several data mining algorithms and various Neural Network models such as Convolution Neural Networks (CNN), Recurrent Neural Networks (RNN), and the Bi-directional RNN it has been proposed that Recurrent Neural Network-Long Short-Term Memory (RNN-LSTM) based emotion recognition using Electroencephalography (EEG) signals provides a better result. The main purpose of this paper is to introduce models which can work better than the existing ones on the K-EmoCon dataset. The metrics used in this paper are valence and arousal. The proposed RNN-LSTM model achieves a valence accuracy of 69.85% and an arousal accuracy of 45.07%. This model improves the accuracy of emotion detection on the K-EmoCon dataset. This approach achieves 4% more accuracy when compared to existing models such as the Convolution-augmented Transformer.
情感是人类精神状态的一种表现,在人类的日常生活中扮演着重要的角色,帮助人们做出正确的决定。了解人类情感的一种典型方法是观察一个人的面部表情和语言调节,它可以分为悲伤、愤怒、快乐、恐惧等。利用脑机接口(BCI)系统进行情绪识别,对瘫痪、自闭症、智力低下等不能像正常人一样表达情绪的患者非常有益。本文在分析了几种数据挖掘算法和卷积神经网络(CNN)、递归神经网络(RNN)、双向神经网络(Bi-directional RNN)等神经网络模型的基础上,提出基于递归神经网络-长短期记忆(RNN- lstm)的脑电图(EEG)信号情感识别具有较好的效果。本文的主要目的是在K-EmoCon数据集上引入比现有模型更好的模型。本文使用的度量是效价和唤起。RNN-LSTM模型的效价准确率为69.85%,唤醒准确率为45.07%。该模型提高了K-EmoCon数据集情感检测的准确性。与现有模型(如卷积增强变压器)相比,该方法的准确率提高了4%。
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引用次数: 0
AI for the detection of neurological condition: Parkinson's disease & emotions 用于检测神经系统疾病的人工智能:帕金森病和情绪
Pub Date : 1900-01-01 DOI: 10.26634/jaim.1.1.19135
Jain Abhishek, Raja Rohit
Artificial Intelligence (AI) is widely applied by many researchers in the measurement and analysis of signals and images in clinical medicine and the biological sciences. The role of machine learning in processing biomedical signals and its applications in medicine and healthcare is huge, and it is now in a very advanced stage. Several types of biomedical signals have been analyzed by using Deep Learning (DL), Neural Networks (NN), and Artificial Intelligence on Electrocardiogram (ECG) and Electroencephalogram (EEG) signals by many researchers. Parkinson's disease (PD) is a neurodegenerative disorder that progresses over time and is characterized by rigidity, tremor, postural instability, and non-motor symptoms caused by the loss of dopaminergic neurons in the substantia nigra. This paper analyses the current state of the art of EEG analysis using AI techniques for Parkinson's disease detection and emotion detection.
人工智能(AI)被广泛应用于临床医学和生物科学中信号和图像的测量和分析。机器学习在处理生物医学信号及其在医学和医疗保健中的应用方面的作用是巨大的,目前处于非常先进的阶段。许多研究者利用深度学习(DL)、神经网络(NN)和人工智能(ai)对心电图(ECG)和脑电图(EEG)信号进行了多种生物医学信号的分析。帕金森病(PD)是一种随时间进展的神经退行性疾病,其特征是由黑质多巴胺能神经元丧失引起的僵硬、震颤、姿势不稳定和非运动症状。本文分析了利用人工智能技术进行脑电图分析的现状,用于帕金森病检测和情绪检测。
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引用次数: 0
Ensemble Dynamic Machine Learning Algorithm (EDMLA) for E-commerce sentiment product recommendation system with the integration of AACSD-an empirical study 集成aacsd的电子商务情感产品推荐系统集成动态机器学习算法(EDMLA)的实证研究
Pub Date : 1900-01-01 DOI: 10.26634/jaim.1.1.19245
V. Sujay, Reddy M. Babu
In this paper, an attempt has been made to investigate the benefits of the Amalgamate Architecture Centric Software Development (AACSD) method through an experimental setup using Machine Learning techniques on an E-Commerce product recommender system. The system recommends products based on authorized user reviews. As part of this research, an Ensemble Dynamic Machine Learning Algorithm (EDMLA) was designed and developed with the integration of AACSD to improve performance quality. Performance was evaluated based on parameters such as sensitivity, specificity, and accuracy.
在本文中,通过在电子商务产品推荐系统上使用机器学习技术的实验设置,尝试调查以合并体系结构为中心的软件开发(AACSD)方法的好处。系统根据授权用户的评论推荐产品。作为本研究的一部分,设计并开发了集成动态机器学习算法(EDMLA),以提高性能质量。性能评估基于参数,如敏感性,特异性和准确性。
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引用次数: 0
Intelligent system-based stun gloves for women's protection 基于智能系统的女性防护电击手套
Pub Date : 1900-01-01 DOI: 10.26634/jaim.1.1.19167
Kumar Verma Subham, M. Khadim, Raj Tiwari Udai, Shrivastava Sandhya, Rai Utkarsh, Vaish Jayati
In recent times, the security of women and girls has become a major concern in urban areas in many countries. To assist with settling this issue, this paper proposes a Global Positioning System (GPS)-based Stun Gloves for women with many safety techniques. The basic operation of this prototype design is that whenever women detect danger, they can simply press the gadget's ON button. When the gadget becomes active, it will track the online position of women using GPS and send an emergency message using the Global System for Mobile Communications (GSM) to the currently enlisted portable number and the police control room. These security Stun Gloves have both an alarm and a shock provider circuit. The heartbeat rate and temperature are also shown on a connected Liquid Crystal Display (LCD). The heartbeat sensor can detect any unusual heart rate patterns and send the woman's current location via GPS to the rescue team or pre-registered mobile number in the form of a Short Message Service (SMS). Likewise, in the case of self-protection, this gadget is incorporated with a shock generator. This safety precaution can be taken by women in case of any emergency crisis, which a female can use against a person. The main benefit of the design of Stun Gloves is that this gadget is compact and easy to use by any woman.
最近,妇女和女孩的安全已成为许多国家城市地区的一个主要问题。为了帮助解决这一问题,本文提出了一种基于全球定位系统(GPS)的女性电击手套,其中包含许多安全技术。这个原型设计的基本操作是,当女性发现危险时,她们只需按下小工具的“打开”按钮。当该装置启动时,它将使用全球定位系统(GPS)跟踪女性的在线位置,并使用全球移动通信系统(GSM)向当前登记的便携式号码和警察控制室发送紧急信息。这些安全电击手套都有报警和电击提供电路。心跳速率和温度也显示在连接的液晶显示器(LCD)上。心跳传感器可以检测到任何不寻常的心率模式,并通过GPS将女性的当前位置以短信服务(SMS)的形式发送给救援队或预先注册的手机号码。同样,在自我保护的情况下,这个小工具与一个冲击发生器结合在一起。这种安全预防措施可由妇女在任何紧急危机情况下采取,妇女可以用来对付别人。电击手套设计的主要好处是,这个小工具是紧凑的,便于任何女性使用。
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引用次数: 0
Machine learning solutions for the healthcare industry: A review 医疗保健行业的机器学习解决方案:综述
Pub Date : 1900-01-01 DOI: 10.26634/jaim.1.1.19230
Devi P. Bharathi, P. Ravindra, Kumar R. Kiran
Machine Learning (ML) has become an increasingly popular tool in the healthcare industry, providing solutions for a wide range of applications, from diagnosis and treatment to drug discovery and population health management. This paper summarizes the current state of Machine Learning in healthcare and highlights key trends and challenges in the field. Topics covered include deep learning algorithms for medical imaging, reinforcement learning for personalized treatment plans, and unsupervised learning for identifying patterns in large healthcare data sets. This paper also discusses the ethical and privacy implications of using Machine Learning in healthcare and the need for robust evaluation and validation of Machine Learning models. Overall, this paper demonstrates the potential of Machine Learning to revolutionize healthcare while also highlighting the need for further research and development in the field.
机器学习(ML)已成为医疗保健行业日益流行的工具,为从诊断和治疗到药物发现和人口健康管理的广泛应用提供解决方案。本文总结了机器学习在医疗保健领域的现状,并强调了该领域的主要趋势和挑战。涵盖的主题包括用于医学成像的深度学习算法、用于个性化治疗计划的强化学习,以及用于识别大型医疗数据集中模式的无监督学习。本文还讨论了在医疗保健中使用机器学习的伦理和隐私影响,以及对机器学习模型进行稳健评估和验证的需求。总体而言,本文展示了机器学习在彻底改变医疗保健方面的潜力,同时也强调了该领域进一步研究和开发的必要性。
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引用次数: 0
Transforming homestay guest experience with AI-powered design tools 用ai驱动的设计工具改变民宿客人的体验
Pub Date : 1900-01-01 DOI: 10.26634/jaim.1.1.19176
Singh Mohan, B. S. J. Gyanendra, Jaiswal Rajat, Tripathi Hitesh, Kumar Turkel Dushyant
Artificial Intelligence (AI) is playing a very significant and prominent role in product development as per consumer requirements. It can provide valuable tools and equipment and assist designers in their work. Homestay design is a service sector component with regional and cultural overtones. Therefore, this study aims to analyze the design and production of homestays through AI in order to raise the standards of homestay establishments and encourage the growth of rural tourism. Exploratory Factor Analysis (EFA) is used to search for factors mainly responsible for designing any homestay establishment based on geographical location and local culture. Then confirmatory factor analysis (CFA) was applied to confirm how the explored factors are related and affect the homestay design through the structural model. According to the survey findings, visitors are more interested in the floor plan, type, and essence of homestays. The research and analysis in this paper found that people prefer the room layout and style of homestays, so when designing a homestay, it uses three-dimensional modeling technology to simulate the room layout and homestay style.
根据消费者的需求,人工智能(AI)在产品开发中发挥着非常重要和突出的作用。它可以提供有价值的工具和设备,并协助设计师的工作。民宿设计是一个具有地域和文化色彩的服务部门。因此,本研究旨在透过AI来分析民宿的设计与制作,以提高民宿的水准,并促进乡村旅游的发展。探索性因素分析(Exploratory Factor Analysis, EFA)是一种基于地理位置和当地文化的民宿设施设计的主要因素。然后运用验证性因子分析(confirmatory factor analysis, CFA),通过结构模型来验证所探索的因素之间是如何关联并影响民宿设计的。根据调查结果,游客对民宿的平面图、类型和本质更感兴趣。通过本文的研究和分析发现,人们更喜欢民宿的房间布局和风格,所以在设计民宿时,使用三维建模技术来模拟民宿的房间布局和风格。
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引用次数: 0
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i-manager's Journal on Artificial Intelligence & Machine Learning
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