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dc.contributor.advisor Eun, Yong Soon -
dc.contributor.author Ahn, DaeHan -
dc.date.accessioned 2018-03-14T02:03:31Z -
dc.date.available 2018-03-14T02:03:31Z -
dc.date.issued 2018 -
dc.identifier.uri http://dgist.dcollection.net/common/orgView/200000005347 en_US
dc.identifier.uri http://hdl.handle.net/20.500.11750/6029 -
dc.description.abstract Healthcare is one of the most important services to preserve the quality of our daily lives, and it is capable of dealing with issues such as global aging, increase in the healthcare cost, and changes to the medical paradigm, i.e., from the in-facility cure to the prevention and cure outside the facility. Accordingly, there has been growing interest in the smart and personalized healthcare systems to diagnose and care themselves. Such systems are capable of providing facility-level diagnosis services by using smart devices (e.g., smartphones, smart watches, and smart glasses). However, in realizing the smart healthcare systems, it is very difficult, albeit impossible, to directly integrate high-precision healthcare technologies or scientific theories into the smart devices due to the stringent limitations in the computing power and battery lifetime, as well as environmental constraints. In this dissertation, we propose three optimization methods in the field of cell counting systems and gait-aid systems for Parkinson's disease patients that address the problems that arise when integrating a specialized healthcare system used in the facilities into mobile or wearable devices. First, we present an optimized cell counting algorithm based on heuristic optimization, which is a key building block for realizing the mobile point-of-care platforms. Second, we develop a learning-based cell counting algorithm that guarantees high performance and efficiency despite the existence of blurry cells due to out-focus and varying brightness of background caused by the limitation of lenses free in-line holographic apparatus. Finally, we propose smart gait-aid glasses for Parkinson’s disease patients based on mathematical optimization. ⓒ 2017 DGIST -
dc.description.statementofresponsibility open -
dc.description.tableofcontents I. Introduction 1--

1.1 Global Healthcare Trends 1--

1.2 Smart Healthcare System 2--

1.3 Benefits of Smart Healthcare System 3--

1.4 Challenges of Smart Healthcare. 4--

1.5 Optimization 6--

1.6 Aims of the Dissertation 7--

1.7 Dissertation Organization 8--

II.Optimization of a cell counting algorithm for mobile point-of-care testing platforms 9--

2.1 Introduction 9--

2.2 Materials and Methods. 13--

2.2.1 Experimental Setup. 13--

2.2.2 Overview of Cell Counting. 16--

2.2.3 Cell Library Optimization. 18--

2.2.4 NCC Approximation. 20--

2.3 Results 21--

2.3.1 Cell Library Optimization. 21--

2.3.2 NCC Approximation. 23--

2.3.3 Measurement Using an Android Device. 28--

2.4 Summary 32--

III.Human-level Blood Cell Counting System using NCC-Deep learning algorithm on Lens-free Shadow Image. 33--

3.1 Introduction 33--

3.2 Cell Counting Architecture 36--

3.3 Methods 37--

3.3.1 Candidate Point Selection based on NCC. 37--

3.3.2 Reliable Cell Counting using CNN. 40--

3.4 Results 43--

3.4.1 Subjects . 43--

3.4.2 Evaluation for the cropped cell image 44--

3.4.3 Evaluation on the blood sample image 46--

3.4.4 Elapsed-time evaluation 50--

3.5 Summary 50--

IV.Smart Gait-Aid Glasses for Parkinson’s Disease Patients 52--

4.1 Introduction 52--

4.2 Related Works 54--

4.2.1 Existing FOG Detection Methods 54--

4.2.2 Existing Gait-Aid Systems 56--

4.3 Methods 57--

4.3.1 Movement Recognition. 59--

4.3.2 FOG Detection On Glasses. 62--

4.3.3 Generation of Visual Patterns 66--

4.4 Experiments . 67--

4.5 Results 69--

4.5.1 FOG Detection Performance. 69--

4.5.2 Gait-Aid Performance. 71--

4.6 Summary 73--

V. Conclusion 75--

Reference 77--

요약문 89
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dc.format.extent 89 -
dc.language eng -
dc.publisher DGIST -
dc.subject Optimization -
dc.subject Smart Healthcare -
dc.subject Cell Counting -
dc.subject Parkinson's Disease -
dc.subject System Integration -
dc.title Optimization Algorithms for Integrating Advanced Facility-Level Healthcare Technologies into Personal Healthcare Devices -
dc.type Thesis -
dc.identifier.doi 10.22677/thesis.200000005347 -
dc.description.alternativeAbstract 본 논문은 의료 관련 연구시설 및 병원 그리고 실험실 레벨에서 사용되는 전문적인 헬스케어 시스템을 개인의 일상생활 속에서 사용할 수 있는 스마트 헬스케어 시스템에 적용시키기 위한 최적화 문제에 대해 다룬다. 현대 사회에서 의료비용 증가 세계적인 고령화에 따라 의료 패러다임은 질병이 발생한 뒤 시설 내에서 치료 받는 방식에서 질병이나 건강관리에 관심있는 환자 혹은 일반인이 휴대할 수 있는 개인용 디바이스를 이용하여 의료 서비스에 접근하고, 이를 이용하여 질병을 미리 예방하는 방식으로 바뀌었다. 이에 따라 언제, 어디서나 스마트 디바이스(스마트폰, 스마트워치, 스마트안경 등)를 이용하여 병원 수준의 예방 및 진단을 실현하는 스마트 헬스케어가 주목 받고 있다. 하지만, 스마트 헬스케어 서비스 실현을 위하여 기존의 전문 헬스케어 장치 및 과학적 이론을 스마트 디바이스에 접목하는 데에는 스마트 디바이스의 제한적인 컴퓨팅 파워와 배터리, 그리고 연구소나 실험실에서 발생하지 않았던 환경적인 제약조건으로 인해 적용 할 수 없는 문제가 있다. 따라서 사용 환경에 맞춰 동작 가능하도록 최적화가 필요하다. 본 논문에서는 Cell counting 분야와 파킨슨 환자의 보행 보조 분야에서 전문 헬스케어 시스템을 스마트 헬스케어에 접목시키는데 발생하는 세 가지 문제를 제시하고 문제 해결을 위한 세 가지 최적화 알고리즘(Heuristic optimization, Learning-based optimization, Mathematical optimization) 및 이를 기반으로 하는 시스템을 제안한다. -
dc.description.degree Doctor -
dc.contributor.department Information and Communication Engineering -
dc.contributor.coadvisor Park, Tae Joon -
dc.date.awarded 2018. 2 -
dc.publisher.location Daegu -
dc.description.database dCollection -
dc.date.accepted 2018-01-05 -
dc.contributor.alternativeDepartment 대학원 정보통신융합전공 -
dc.contributor.alternativeName 안대한 -
dc.contributor.alternativeName 은용순 -
dc.contributor.alternativeName 박태준 -
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