원격탐사와 GIS를 활용한 공간자료 분석은 재난 관리에 효율적인 기술로 이를 활용한 재난정보 제공을 위한 자료 분석 및 기술 개발에 관한 연구가 활발히 진행되고 있다. 특히 군집위성의 발사와 다양한 원격탐사 플랫폼의 활용, 취득된 데이터 처리 및 저장 능력의 향상, 인공지능 기술의 발달 등으로 인해 재난 관리를 위한 원격탐사와 GIS 기술의 활용은 많은 발전의 여지를 가지고 있다. 이번 특별호에는 재난의 예측, 감시 그리고 대응 단계에서 선박탐지, 건축물 추출, 해양환경 감시, 홍수탐지, 산불탐지, 그리고 재난 발생시 의사결정지원에 적용 가능한 원격탐사와 GIS 기술의 개발과 활용한 관련한 10편의 논문이 게재되었다. 이번 특별호에 출판된 논문들은 재난 관리 기술의 발전과 연관 학문 분야의 학술적 발전에 밑거름이 될 것으로 판단된다.
원격탐사와 GIS를 활용한 공간자료 분석은 재난 관리에 효율적인 기술로 이를 활용한 재난정보 제공을 위한 자료 분석 및 기술 개발에 관한 연구가 활발히 진행되고 있다. 특히 군집위성의 발사와 다양한 원격탐사 플랫폼의 활용, 취득된 데이터 처리 및 저장 능력의 향상, 인공지능 기술의 발달 등으로 인해 재난 관리를 위한 원격탐사와 GIS 기술의 활용은 많은 발전의 여지를 가지고 있다. 이번 특별호에는 재난의 예측, 감시 그리고 대응 단계에서 선박탐지, 건축물 추출, 해양환경 감시, 홍수탐지, 산불탐지, 그리고 재난 발생시 의사결정지원에 적용 가능한 원격탐사와 GIS 기술의 개발과 활용한 관련한 10편의 논문이 게재되었다. 이번 특별호에 출판된 논문들은 재난 관리 기술의 발전과 연관 학문 분야의 학술적 발전에 밑거름이 될 것으로 판단된다.
As remote sensing and GIS have been considered to be essential technologies for disasters information production, researches on developing methods for analyzing spatial data, and developing new technologies for such purposes, have been actively conducted. Especially, it is assumed that the use of re...
As remote sensing and GIS have been considered to be essential technologies for disasters information production, researches on developing methods for analyzing spatial data, and developing new technologies for such purposes, have been actively conducted. Especially, it is assumed that the use of remote sensing and GIS for disaster management will continue to develop thanks to the launch of recent satellite constellations, the use of various remote sensing platforms, the improvement of acquired data processing and storage capacity, and the advancement of artificial intelligence technology. This spatial issue presents 10 research papers regarding ship detection, building information extraction, ocean environment monitoring, flood monitoring, forest fire detection, and decision making using remote sensing and GIS technologies, which can be applied at the disaster prediction, monitoring and response stages. It is anticipated that the papers published in this special issue could be a valuable reference for developing technologies for disaster management and academic advancement of related fields.
As remote sensing and GIS have been considered to be essential technologies for disasters information production, researches on developing methods for analyzing spatial data, and developing new technologies for such purposes, have been actively conducted. Especially, it is assumed that the use of remote sensing and GIS for disaster management will continue to develop thanks to the launch of recent satellite constellations, the use of various remote sensing platforms, the improvement of acquired data processing and storage capacity, and the advancement of artificial intelligence technology. This spatial issue presents 10 research papers regarding ship detection, building information extraction, ocean environment monitoring, flood monitoring, forest fire detection, and decision making using remote sensing and GIS technologies, which can be applied at the disaster prediction, monitoring and response stages. It is anticipated that the papers published in this special issue could be a valuable reference for developing technologies for disaster management and academic advancement of related fields.
위에 소개된 대로, 본 특별호에는 선박, 건축물, 해양환경, 홍수, 산불, 그리고 재난 발생시 의사결정지원에 관련한 10편의 논문이 게재되었으며, 해당 연구들은 재난의 예측, 감시, 그리고 대응 과정에서 활용 가능한 기술의 개발과 적용성 증대에서 그 의의를 가진다. 기후 변화와 사회의 복잡화로 인해 재난재해의 발생이 더욱 빈번해 질 것으로 예상되므로, 이번 특별호에 출판된 논문들은 원격탐사와 GIS 기반의 재난관리 기술의 발전과 연관 학문 분야의 학술적 발전에 밑거름이 될 것으로 판단된다.
이번 특별호에는 원격탐사와 GIS를 활용한 재난의 예측, 감시 그리고 대응 과정에 적용또는 활용 가능한 기술에 관련한 10편의 논문이 게재 되었으며, 아래에는 해양환경 감시, 선박탐지, 건축물 추출, 홍수 탐지, 산불 탐지, 그리고 재난 발생시 의사결정지원에 관련한 그 10편의 논문을 간략히 소개한다.
후속연구
위에 소개된 대로, 본 특별호에는 선박, 건축물, 해양환경, 홍수, 산불, 그리고 재난 발생시 의사결정지원에 관련한 10편의 논문이 게재되었으며, 해당 연구들은 재난의 예측, 감시, 그리고 대응 과정에서 활용 가능한 기술의 개발과 적용성 증대에서 그 의의를 가진다. 기후 변화와 사회의 복잡화로 인해 재난재해의 발생이 더욱 빈번해 질 것으로 예상되므로, 이번 특별호에 출판된 논문들은 원격탐사와 GIS 기반의 재난관리 기술의 발전과 연관 학문 분야의 학술적 발전에 밑거름이 될 것으로 판단된다.
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