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An ensemble based multi-model and multidimensional approach for fall prediction and evaluation in parkinson’s disease patients

Publication Type : Journal Article

Publisher : Expert Systems

Source : Expert Systems, page e13182, 2022

Url : https://onlinelibrary.wiley.com/doi/abs/10.1111/exsy.13182

Campus : Amritapuri

School : School of Computing

Department : Computer Science and Engineering

Year : 2022

Abstract : Artificial Intelligence (AI), as a mainstream science today, has the potential to significantly improve human wellbeing and wellness. An automated caretaking system is being developed in this study to enable constant monitoring of people without requiring much human intervention. To do so, we must take into account a wide range of people's movements and varied perspectives in real-time contexts. The proposed system, coined “Eye-Tact”, integrates a vision-based multimodel architecture with wearable sensors to identify poses and detect falls. For people with Parkinson's disease (PD), this patient-specific, vision-based keypoint analysis model has been successfully deployed for person identification and aberrant activity recognition. The proposed Multi Model Ensemble Technique (MMET) employs a variety of sensors to acquire data on physiological and other parameters that are necessary for fall prediction and evaluation. The measures used in the proposed system are precision, recall, F1 score and support. The above mentioned parameters are used to evaluate the performance of different models, including XGBoostClassifier, CatBoostClassifier, and RandomForestClassifier. The results reveal that the RantomForestClassifier outperforms other types of classifiers with 97% of accuracy. The proposed work demonstrates its capacity to develop a system that carefully understands and analyses heterogeneous data cautiously using state-of-the-art technologies.

Cite this Research Publication : Divya Radhakrishnan and Dinesh Peter James. Eye-tact: An ensemble based multi-model and multidimensional approach for fall prediction and evaluation in parkinson’s disease patients. Expert Systems, page e13182, 2022

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