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dc.contributor.advisor Son, Sang Hyuk -
dc.contributor.author Paul Otten -
dc.date.accessioned 2017-05-10T08:51:33Z -
dc.date.available 2015-01-12T00:00:00Z -
dc.date.issued 2015 -
dc.identifier.uri http://dgist.dcollection.net/jsp/common/DcLoOrgPer.jsp?sItemId=000001922800 en_US
dc.identifier.uri http://hdl.handle.net/20.500.11750/1403 -
dc.description.abstract Evaluation of post-stroke hemiplegic patients is an important aspect of rehabilitation, especially for assessing improvement of a patient’s condition from a treatment. It is also a necessary step to perform during clinical trials. The Fugl-Meyer Assessment (FMA) is one of the most widely recognized and utilized measures of body function impairment for post-stroke patients. We propose a method for automating the upper-limb portion of the FMA by gathering data from sensors monitoring the patient. Features are extracted from the data and processed by a machine learning algorithm. The output from the machine learning algorithm returns a value that can be used to score a patient’s upper limb functionality. The machine learning algorithms tested in our system were Support Vector Machines (SVM) and Backpropagation Neural Networks (BNN). This system will enable automating and inexpensive stroke patient evaluation that can save up to 30 minutes per patient for a doctor, providing a time-saving service for doctors and stroke researchers. ⓒ 2015 DGIST -
dc.description.tableofcontents I.INTRODUCTION 1 --
II. RELATED WORKS 7 --
III. SENSOR DATA 10 --
3.1 Kinect 11 --
3.2 Wired Glov 12 --
3.3 Pressure Sensor 12 --
3.4 Additional Sensors 13 --
3.5 Data Aggregation 15 --
IV. MACHINE LEARNING 16 --
4.1 SVM Overview 16 --
4.2 BNN Overview 18 --
4.3 Feature Extraction 19 --
4.4 Training SVM 24 --
4.5 Training BNN 27 --
V. EXPERIMENTAL RESULTS 30 --
VI. CONCLUSION 32 --
References 33 --
Korean Summary 36 --
Acknowledgements 37 --
Curriculum Vitae 38
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dc.format.extent 38 -
dc.language eng -
dc.publisher DGIST -
dc.subject stroke assessment -
dc.subject Fugl-Meyer Assessment -
dc.subject machine learning -
dc.subject Support Vector Machine -
dc.subject KinectMachine learning -
dc.subject stroke evaluation -
dc.subject kinect -
dc.subject CPS -
dc.title Automating the Fugl-Meyer Assessment with Supervised Machine Learning -
dc.title.alternative Supervised 기계학습을 이용한 Fugl-Meyer 평가의 자동화 -
dc.type Thesis -
dc.identifier.doi 10.22677/thesis.1922800 -
dc.description.alternativeAbstract 치료 후 반신불수인 뇌졸증 환자의 호전을 평가하는 것은 재활에 있어서 중요한 사항이다. 이것은 또한 임상 실험 동안 수행하는 필수적인 단계이다. Fugl-Meyer Assessment (FMA)는 뇌졸증 환자들의 신체기능 장애를 측정하는 방법들 중 가장 널리 알려졌을 뿐만 아니라 널리 이용 되는 방법이다. 우리는 환자의 동작을 관찰하는 센서로부터 데이터를 모음으로써 팔 부분의 FMA 를 자동화하는 방법을 제안한다. 특징들은 데이터로부터 추출되고 기계학습 알고리즘에 의해 처리된다. 기계학습 알고리즘으로부터 얻은 출력은 환자의 위쪽 팔의 기능을 수치화하는데 사용되는 값을 반환한다. 우리 시스템에서는 Support Vector Machines(SVM)과 Backpropagation Neural Networks (BNN) 이라는 기계학습 알고리즘을 사용한다. 이 시스템은 저렴하고 자동화된 뇌졸증 환자 평가를 하도록 도와 줄 것이다. 게다가 뇌졸중 연구원과 의사들에게 시간을 줄여주는 서비스를 제공하여 의사가 환자당 30 분을 절약 할 수 있을 것이다. ⓒ 2015 DGIST -
dc.description.degree Master -
dc.contributor.department Information and Communication Engineering -
dc.contributor.coadvisor Kim, Jong Hyun -
dc.date.awarded 2015. 2 -
dc.publisher.location Daegu -
dc.description.database dCollection -
dc.date.accepted 2015-01-12 -
dc.contributor.alternativeDepartment 대학원 정보통신융합공학전공 -
dc.contributor.affiliatedAuthor Paul Otten -
dc.contributor.affiliatedAuthor Son, Sang Hyuk -
dc.contributor.affiliatedAuthor Kim, Jong Hyun -
dc.contributor.alternativeName 폴오튼 -
dc.contributor.alternativeName 손상혁 -
dc.contributor.alternativeName 김종현 -
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Department of Electrical Engineering and Computer Science Theses Master

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