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dc.contributor.advisor Kwak, Su Ha -
dc.contributor.author Park, Jin Hee -
dc.date.accessioned 2017-08-02T07:33:38Z -
dc.date.available 2017-08-02T07:33:38Z -
dc.date.issued 2017 -
dc.identifier.uri http://dgist.dcollection.net/jsp/common/DcLoOrgPer.jsp?sItemId=000002376733 en_US
dc.identifier.uri http://hdl.handle.net/20.500.11750/4104 -
dc.description.abstract Accurate classification of human aquatic activities using radar has a variety of potential applications such as rescue operations and border patrols. Nevertheless, the classification of activities of water using radar has not been extensively studied, unlike the case of dry ground, due to its unique challenge. Namely, not only is the radar cross section of a human on water small, but the micro-Doppler signatures are much noisier due to water drops and waves.
In this paper, we first investigate whether discriminative signatures could be obtained for activities on water through a simulation study. Then we show how we can effectively achieve high classification accuracy by applying deep convolutional neural networks(DCNN) directly to the spectrogram of real measurement data.
From the five-fold cross-validation on our dataset, which consists of five aquatic activities, we report that the conventional feature-based scheme only achieves an accuracy of 45.1%. In contrast, the DCNN trained using only the collected data attains 66.7%, and the transfer learned DCNN, which takes a DCNN pre-trained on a RGB image dataset and fine-tunes the parameters using the collected data, achieves a much higher 80.3%, which is a significant performance boost. ⓒ 2017 DGIST
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dc.description.statementofresponsibility open -
dc.description.tableofcontents Ⅰ. Introduction 1--

1.1 Overview 1--

1.2 Related work 3--

1.2.1 Human Activity Classification on Ground using Convolutional Neural Networks 3--

1.2.2 Human Activity Classification on Water using Convolutional Neural Networks 4--

Ⅱ. Micro-Doppler Simulation of Swimming Activities 5--

Ⅲ. Measurements of Human Activities on Water 7--

Ⅳ. Classification Method Using Deep Convolutional Neural Networks 9--

4.1. DCNN Trained from Scratch 9--

4.2. Transfer Learned DCNN 10--

Ⅴ. Experimental Results 13--

Ⅵ. Discussion and Conclusions 17
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dc.format.extent 23 -
dc.language eng -
dc.publisher DGIST -
dc.subject radar -
dc.subject micro-Doppler signatures -
dc.subject aquatic activity classification -
dc.subject 레이더 -
dc.subject 마이크로 도플러 신호 -
dc.subject 수중행동분류 -
dc.subject 전이학습 -
dc.subject 컨볼루션 신경망 -
dc.title Micro-Doppler Based Classification of Human Activities on Water via Transfer Learning of Convolutional Neural Networks -
dc.title.alternative CNN 전이학습을 이용한 마이크로 도플러 신호 기반의 사람 수중행동 분류 -
dc.type Thesis -
dc.identifier.doi 10.22677/thesis.2376733 -
dc.description.degree Master -
dc.contributor.department Information and Communication Engineering -
dc.contributor.coadvisor Moon, Tae Sup -
dc.date.awarded 2017. 8 -
dc.publisher.location Daegu -
dc.description.database dCollection -
dc.date.accepted 2017-07-31 -
dc.contributor.alternativeDepartment 대학원 정보통신융합공학전공 -
dc.contributor.affiliatedAuthor Kwak, Su Ha -
dc.contributor.alternativeName 박진희 -
dc.contributor.alternativeName 곽수하 -
dc.contributor.alternativeName 문태섭 -
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Department of Physics and Chemistry Theses Master

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