• Title/Summary/Keyword: Azure Kinect DK

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Developing Degenerative Arthritis Patient Classification Algorithm based on 3D Walking Video (3차원 보행 영상 기반 퇴행성 관절염 환자 분류 알고리즘 개발)

  • Tea-Ho Kang;Si-Yul Sung;Sang-Hyeok Han;Dong-Hyun Park;Sungwoo Kang
    • Journal of Korean Society of Industrial and Systems Engineering
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    • v.46 no.3
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    • pp.161-169
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    • 2023
  • Degenerative arthritis is a common joint disease that affects many elderly people and is typically diagnosed through radiography. However, the need for remote diagnosis is increasing because knee pain and walking disorders caused by degenerative arthritis make face-to-face treatment difficult. This study collects three-dimensional joint coordinates in real time using Azure Kinect DK and calculates 6 gait features through visualization and one-way ANOVA verification. The random forest classifier, trained with these characteristics, classified degenerative arthritis with an accuracy of 97.52%, and the model's basis for classification was identified through classification algorithm by features. Overall, this study not only compensated for the shortcomings of existing diagnostic methods, but also constructed a high-accuracy prediction model using statistically verified gait features and provided detailed prediction results.

A Movement Tracking Model for Non-Face-to-Face Excercise Contents (비대면 운동 콘텐츠를 위한 움직임 추적 모델)

  • Chung, Daniel;Cho, Mingu;Ko, Ilju
    • KIPS Transactions on Computer and Communication Systems
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    • v.10 no.6
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    • pp.181-190
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    • 2021
  • Sports activities conducted by multiple people are difficult to proceed in a situation where a widespread epidemic such as COVID-19 is spreading, and this causes a lack of physical activity in modern people. This problem can be overcome by using online exercise contents, but it is difficult to check detailed postures such as during face-to-face exercise. In this study, we present a model that detects posture and tracks movement using IT system for better non-face-to-face exercise content management. The proposed motion tracking model defines a body model with reference to motion analysis methods widely used in physical education and defines posture and movement accordingly. Using the proposed model, it is possible to recognize and analyze movements used in exercise, know the number of specific movements in the exercise program, and detect whether or not the exercise program is performed. In order to verify the validity of the proposed model, we implemented motion tracking and exercise program tracking programs using Azure Kinect DK, a markerless motion capture device. If the proposed motion tracking model is improved and the performance of the motion capture system is improved, more detailed motion analysis is possible and the number of types of motions can be increased.