• 제목/요약/키워드: 광데이터

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딥러닝 기반 육상기인 부유쓰레기 탐지 모델 성능 비교 및 현장 적용성 평가 (A Performance Comparison of Land-Based Floating Debris Detection Based on Deep Learning and Its Field Applications)

  • 박수호;장선웅;김흥민;김탁영;예건희
    • 대한원격탐사학회지
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    • 제39권2호
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    • pp.193-205
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    • 2023
  • 집중강우 시 육상으로부터 다량으로 유입된 부유쓰레기는 사회, 경제적 및 환경적으로 부정적인 영향을 주고 있으나 부유쓰레기 집적 구간 및 발생량에 대한 모니터링 체계는 미흡한 실정이다. 최근 인공지능 기술의 발달로 드론 영상과 딥러닝 기반 객체탐지 모델을 활용하여 수계 내 광범위한 지역을 신속하고 효율적인 연구의 필요성이 요구되고 있다. 본 연구에서는 육상기인 부유쓰레기의 효율적인 탐지 기법을 제시하기 위해 드론 영상뿐만 아니라 다양한 이미지를 확보하여 You Only Look Once (YOLO)v5s와 최근에 개발된 YOLO7 및 YOLOv8s로 학습하여 모델별로 성능을 비교하였다. 각 모델의 정성적인 성능 평가 결과, 세 모델 모두 일반적인 상황에서 탐지성능이 우수한 것으로 나타났으나, 이미지의 노출이 심하거나 수면의 태양광 반사가 심한 경우 YOLOv8s 모델에서 대상물을 누락 또는 중복 탐지하는 사례가 나타났다. 정량적인 성능 평가 결과, YOLOv7의 mean Average Precision (intersection over union, IoU 0.5)이 0.940으로 YOLOv5s (0.922)와 YOLOvs8(0.922)보다 좋은 성능을 나타냈다. 데이터 품질에 따른 모델의 성능 비교하기 위해 색상 및 고주파 성분에 왜곡을 발생시킨 결과, YOLOv8s 모델의 성능 저하가 가장 뚜렷하게 나타났으며, YOLOv7 모델이 가장 낮은 성능 저하 폭을 보였다. 이를 통해 수면 위에 존재하는 부유쓰레기 탐지에 있어서 YOLOv7 모델이 YOLOv5s와 YOLOv8s 모델에 비해 강인한 모델임을 확인하였다. 본 연구에서 제안하는 딥러닝 기반 부유쓰레기 탐지 기법은 부유쓰레기의 성상별 분포 현황을 공간적으로 파악할 수 있어 향후 정화작업 계획수립에 기여할 수 있을 것으로 판단된다.

GOCI를 이용한 GOCI-II 근적외 밴드 교차보정 (Cross-Calibration of GOCI-II in Near-Infrared Band with GOCI)

  • 이은경;배수정;안재현;이경상
    • 대한원격탐사학회지
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    • 제39권6_2호
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    • pp.1553-1563
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    • 2023
  • 천리안 해양관측위성 2호기(Geostationary Ocean Color Imager-II, GOCI-II)는 한반도 주변을 포함한 동북아 해역과 전구 영역을 관측하는 해색 위성으로 지난 10년간 운용된 GOCI의 임무를 이어받아 2020년부터 현재까지 운용되고 있다. 본 연구에서는 해색 데이터 산출에 있어 필수 과정인 대기보정 알고리즘을 개선하기 위해 GOCI 영상을 이용한 GOCI-II 근적외 파장(near-infrared, NIR) 밴드의 대리교정을 수행하였다. 이를 위해 NIR 밴드의 대기상층(top-of-atmosphere, TOA) radiance에 대한 교차보정 연구를 수행하였으며, 그 결과로 대리교정 상수를 도출하였다. 본 연구에서 도출된 대리교정 상수를 이용하여 보정한 결과 두 센서의 offset이 감소하였으며, ratio는 745 nm, 865 nm에 대해 각 1.02, 1.04에서 1.0, 0.99로 개선되었다. 이는 두 센서의 일관성이 높아진 것으로 판단된다. 또한, 대기 분자 산란 보정 반사도(Rayleigh-corrected reflectance, 𝜌rc)는 각각 5.62, 9.52% 증가하였다. 이로 인해 745 nm와 865 nm 𝜌rc의 비율의 차이가 발생했으며, 이는 대기보정 알고리즘 내 에어로졸 광 산란 보정 과정을 통해 모든 밴드의 대기보정 결과에 영향을 줄 수 있다. GOCI, GOCI-II 두 위성의 중복되는 운용 기간이 짧아 2021년 3월의 자료만을 사용하였으나, 향후 타위성과의 지속적인 교차보정 연구를 통해 개선이 가능할 것으로 사료된다. 또한 본 연구에서 도출된 NIR 밴드의 대리교정 상수를 적용하여 가시 채널의 대리교정을 수행하고, 해색 산출물의 정확도에 미치는 영향을 분석할 필요가 있다.

Ti3O5/SiO2 다층박막를 이용한 협대역 칼라투과필터 제작 및 특성연구 (The Fabrication and Characteristic for Narrow-band Pass Color-filter Deposited by Ti3O5/SiO2 Multilayer)

  • 박문찬;고견채;이화자
    • 한국안광학회지
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    • 제16권4호
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    • pp.357-362
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    • 2011
  • 목적: $Ti_3O_5$$SiO_2$를 이용하여 중심파장이 500 nm에서 반치폭이 약 12 nm이고 투과율이 99%인 협대역 칼라투과필터를 제작하고, 이 칼라필터의 박막 특성을 연구하고자 한다. 방법: 두께 800 nm인 $Ti_3O_5$박막과 $SiO_2$박막의 투과율로부터 박막의 광학상수 n(굴절률)과 k(소멸계수)를 구하였고, Essential Macleod program을 이용하여 중심파장이 500 nm에서 반치폭이 약 12 nm이고 투과율이 99%인 협대역 칼라투과필터의 필터층과 AR 코팅층을 설계하였다. 또 한 electron beam evaporation 장치를 이용하여 $Ti_3O_5/SiO_2$ 다층막 칼라필터을 만든 후, 분광광도계를 이용하여 투과율을 측정하였고, SEM 사진에 의한 칼라필터의 단면으로부터 칼라필터의 박막두께와 층수를 알 수 있었고, XPS분석으로부터 박막 성분을 분석하였다. 결과: 칼라필터의 AR 코팅층의 최적조건은 6층으로 [air$|SiO_2(90)|Ti_3O_5(36)|SiO_2(5)|Ti_3O_5(73)|SiO_2(30)|Ti_3O_5(15)|$ glass]이며, 반치폭이 12 nm인 칼라필터의 필터층의 최적조건은 41층으로 [air$|SiO_2(20)|Ti_3O_5(64)|SiO_2(102)|Ti_3O_5(66)|SiO_2(112)|Ti_3O_5(74)|SiO_2(120)|Ti_3O_5(68)|SiO_2(123)|Ti_3O_5(80)|SiO_2(109)|Ti_3O_5(70)|SiO_2(105)|Ti_3O_5(62)|SiO_2(99)|Ti_3O_5(63)|SiO_2(98)|Ti_3O_5(51)|SiO_2(60)|Ti_3O_5(42)|SiO_2(113)|Ti_3O_5(88)|SiO_2(116)|Ti_3O_5(68)|SiO_2(89)|Ti_3O_5(49)|SiO_2(77)|Ti_3O_5(48)|SiO_2(84)|Ti_3O_5(51)|SiO_2(85)|Ti_3O_5(48)|SiO_2(59)|Ti_3O_5(34)|SiO_2(71)|Ti_3O_5(44)|SiO_2(65)|Ti_3O_5(45)|SiO_2(81)|Ti_3O_5(52)|SiO_2(88)|$ glass] 이었다. 위의 데이터를 이용하여 제작한 칼라필터는 SEM 사진에 의해 41층으로 확인되었으며, XPS 분석에 의해 $SiO_2$층이 맨 위층이며 $Ti_3O_5$층과 교번인 다층막으로 형성돼 있으며, $Ti_3O_5$박막 형성 시 TiO2 박막과 $Ti_3O_5$박막이 섞여 형성됨을 알 수 있었다. 결론: 41층의 $Ti_3O_5/SiO_2$ 다층박막을 이용하여 12 nm 반치폭을 갖으며 500 nm 중심파장에서 투과율은 99%인 협대역 칼라투과필터를 제작하였으며, 이 칼라필터는 $Ti_3O_5$박막 형성 시 TiO2 박막과 $Ti_3O_5$박막이 섞여 형성됨을 알 수 있었다.

빅데이터 도입의도에 미치는 영향요인에 관한 연구: 전략적 가치인식과 TOE(Technology Organizational Environment) Framework을 중심으로 (An Empirical Study on the Influencing Factors for Big Data Intented Adoption: Focusing on the Strategic Value Recognition and TOE Framework)

  • 가회광;김진수
    • Asia pacific journal of information systems
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    • 제24권4호
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    • pp.443-472
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    • 2014
  • To survive in the global competitive environment, enterprise should be able to solve various problems and find the optimal solution effectively. The big-data is being perceived as a tool for solving enterprise problems effectively and improve competitiveness with its' various problem solving and advanced predictive capabilities. Due to its remarkable performance, the implementation of big data systems has been increased through many enterprises around the world. Currently the big-data is called the 'crude oil' of the 21st century and is expected to provide competitive superiority. The reason why the big data is in the limelight is because while the conventional IT technology has been falling behind much in its possibility level, the big data has gone beyond the technological possibility and has the advantage of being utilized to create new values such as business optimization and new business creation through analysis of big data. Since the big data has been introduced too hastily without considering the strategic value deduction and achievement obtained through the big data, however, there are difficulties in the strategic value deduction and data utilization that can be gained through big data. According to the survey result of 1,800 IT professionals from 18 countries world wide, the percentage of the corporation where the big data is being utilized well was only 28%, and many of them responded that they are having difficulties in strategic value deduction and operation through big data. The strategic value should be deducted and environment phases like corporate internal and external related regulations and systems should be considered in order to introduce big data, but these factors were not well being reflected. The cause of the failure turned out to be that the big data was introduced by way of the IT trend and surrounding environment, but it was introduced hastily in the situation where the introduction condition was not well arranged. The strategic value which can be obtained through big data should be clearly comprehended and systematic environment analysis is very important about applicability in order to introduce successful big data, but since the corporations are considering only partial achievements and technological phases that can be obtained through big data, the successful introduction is not being made. Previous study shows that most of big data researches are focused on big data concept, cases, and practical suggestions without empirical study. The purpose of this study is provide the theoretically and practically useful implementation framework and strategies of big data systems with conducting comprehensive literature review, finding influencing factors for successful big data systems implementation, and analysing empirical models. To do this, the elements which can affect the introduction intention of big data were deducted by reviewing the information system's successful factors, strategic value perception factors, considering factors for the information system introduction environment and big data related literature in order to comprehend the effect factors when the corporations introduce big data and structured questionnaire was developed. After that, the questionnaire and the statistical analysis were performed with the people in charge of the big data inside the corporations as objects. According to the statistical analysis, it was shown that the strategic value perception factor and the inside-industry environmental factors affected positively the introduction intention of big data. The theoretical, practical and political implications deducted from the study result is as follows. The frist theoretical implication is that this study has proposed theoretically effect factors which affect the introduction intention of big data by reviewing the strategic value perception and environmental factors and big data related precedent studies and proposed the variables and measurement items which were analyzed empirically and verified. This study has meaning in that it has measured the influence of each variable on the introduction intention by verifying the relationship between the independent variables and the dependent variables through structural equation model. Second, this study has defined the independent variable(strategic value perception, environment), dependent variable(introduction intention) and regulatory variable(type of business and corporate size) about big data introduction intention and has arranged theoretical base in studying big data related field empirically afterwards by developing measurement items which has obtained credibility and validity. Third, by verifying the strategic value perception factors and the significance about environmental factors proposed in the conventional precedent studies, this study will be able to give aid to the afterwards empirical study about effect factors on big data introduction. The operational implications are as follows. First, this study has arranged the empirical study base about big data field by investigating the cause and effect relationship about the influence of the strategic value perception factor and environmental factor on the introduction intention and proposing the measurement items which has obtained the justice, credibility and validity etc. Second, this study has proposed the study result that the strategic value perception factor affects positively the big data introduction intention and it has meaning in that the importance of the strategic value perception has been presented. Third, the study has proposed that the corporation which introduces big data should consider the big data introduction through precise analysis about industry's internal environment. Fourth, this study has proposed the point that the size and type of business of the corresponding corporation should be considered in introducing the big data by presenting the difference of the effect factors of big data introduction depending on the size and type of business of the corporation. The political implications are as follows. First, variety of utilization of big data is needed. The strategic value that big data has can be accessed in various ways in the product, service field, productivity field, decision making field etc and can be utilized in all the business fields based on that, but the parts that main domestic corporations are considering are limited to some parts of the products and service fields. Accordingly, in introducing big data, reviewing the phase about utilization in detail and design the big data system in a form which can maximize the utilization rate will be necessary. Second, the study is proposing the burden of the cost of the system introduction, difficulty in utilization in the system and lack of credibility in the supply corporations etc in the big data introduction phase by corporations. Since the world IT corporations are predominating the big data market, the big data introduction of domestic corporations can not but to be dependent on the foreign corporations. When considering that fact, that our country does not have global IT corporations even though it is world powerful IT country, the big data can be thought to be the chance to rear world level corporations. Accordingly, the government shall need to rear star corporations through active political support. Third, the corporations' internal and external professional manpower for the big data introduction and operation lacks. Big data is a system where how valuable data can be deducted utilizing data is more important than the system construction itself. For this, talent who are equipped with academic knowledge and experience in various fields like IT, statistics, strategy and management etc and manpower training should be implemented through systematic education for these talents. This study has arranged theoretical base for empirical studies about big data related fields by comprehending the main variables which affect the big data introduction intention and verifying them and is expected to be able to propose useful guidelines for the corporations and policy developers who are considering big data implementationby analyzing empirically that theoretical base.