METHOD AND SYSTEM FOR MONITORING HUMAN PARAMETERS USING HIERARCHIAL HUMAN ACTIVITY SENSING

    公开(公告)号:US20250031966A1

    公开(公告)日:2025-01-30

    申请号:US18752973

    申请日:2024-06-25

    Abstract: This disclosure relates generally to method and system for monitoring human parameters using hierarchical human activity sensing. The method is based on sensing as service (SEAS) model which processes continuous mobility data from multiple sensors on the client edge-device by optimizing the on-device processing pipelines. The method requests a subject to select a human parameter of the human body to be monitored using a master device and capture the plurality of signals by recognizing sensors corresponding to the health parameter. The master device transmits to the server the subject selected human parameter of the human body to be monitored and requesting the server to recommend a hierarchical classifier structure. Further, the human body is monitored based on the on-device hierarchical sensing pipeline by executing a plurality of algorithms. In addition, the system is suitable for remote monitoring and flexible edge cloud arbitration, optimizing costs, infrastructure, and energy.

    METHOD AND SYSTEM FOR DETERMINING CARDIAC ABNORMALITIES USING CHAOS-BASED CLASSIFICATION MODEL FROM MULTI-LEAD ECG

    公开(公告)号:US20240321450A1

    公开(公告)日:2024-09-26

    申请号:US18393358

    申请日:2023-12-21

    CPC classification number: G16H50/20 G06F18/2415

    Abstract: Improvement in the accuracy of disease diagnosis associated with cardiac abnormalities is an open research area. Appropriate feature selection to capture the underlying signs of a disease is critical in Machine Learning (ML) based approaches. A method and system for, determining cardiac abnormalities using chaos-based classification model from multi-lead ECG signals, is disclosed. The method combines the commonly used chaos parameter with other set of chaos-related statistical parameters like non-linearity, self-similarity, Chebyshev distance and spectral flatness for a holistic approach to the study of cardiac abnormalities. The method disclosed thus attempts to use above ML based measures for disease classification. The set of chaos-related features used herein contribute to improving the accuracy of detection of various cardiac diseases arising due to cardiac abnormalities such as Atrial Fibrillation (AF) and the like. The improved accuracy in the detection of AF effectively improves the accuracy in percentage of AF burden.

    METHOD AND SYSTEM FOR IDENTIFYING UNHEALTHY BEHAVIOR TRIGGER AND PROVIDING NUDGES

    公开(公告)号:US20240120085A1

    公开(公告)日:2024-04-11

    申请号:US18480109

    申请日:2023-10-03

    CPC classification number: G16H40/63

    Abstract: Existing systems for behavioural tracking and identification have the disadvantage that they do not analyse data in behavioural aspects. As a result, they lack ability to pre-empt scenarios involving actions that adversely affect user health. The disclosure herein generally relates to behavior prediction, and, more particularly, to a method and system for identifying unhealthy behavior trigger and providing nudges. The system generates a casual inference model, which is a reverse causality model facilitating mapping of context with one or more behaviour of the user. The system further collects and processes real-time data using the casual inference model, to perform behavioral analysis of the user.

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