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함보영(Ham, Bo Young),이천용(Lee, Chun Yong),변혜경(Byun, Hye Kyung),민병걸(Min, Byoung Keol) 대한공간정보학회 2013 대한공간정보학회지 Vol.21 No.3
사회 변화에 따라 산지이용 수요가 증가하고 다양화되면서 산림을 훼손하고, 타 용도로 활용하는 산지의 면적이 증가하고 있다. 이에 최근 훼손된 산지의 면적을 효과적으로 확인하기 위하여 두 시기의 항공사진을 활용한 훼손산지 변화탐지 기법을 연구하였다. 본 연구에서 개발한 기법은 객체기반 변화탐지 형식으로, 영상 혼합 - 객체 분할 - 객체 병합 - 노이즈 제거 - 훼손지 추출의 5가지 단계로 진행되었다. 훼손 산지에 적합한 객체생성 수준을 선정하고, 객체를 분할·병합하는 과정을 통해 객체 간의 관계와 각 객체가 지닌 분광 특성 및 정황적(Contextual) 정보를 활용하여 신규 훼손 산지를 추출하였다. 시범 영역 테스트 결과, 전체 판독범위의 12%에 해당하는 훼손 산지를 추출하였고 육안판독 훼손산지의 평균 96%를 포함함으로써, 육안판독 전·후의 보완 자료로서의 가치와 자동추출의 가능성을 확인하였다. With high social demands for the diverse utilizations of forest lands, the illegal forest land use changes have increased. We studied change detection technique to detect changes in forest land use using an object-oriented segmentation of RED bands differencing in multi-temporal aerial photographs. The new object-oriented segmentation method consists of the 5 steps, “Image Composite - Segmentation - Reshaping - Noise Remover - Change Detection”. The method enabled extraction of deforested objects by selecting a suitable threshold to determine whether the objects was divided or merged, based on the relations between the objects, spectral characteristics and contextual information from multi-temporal aerial photographs. The results found that the object-oriented segmentation method detected 12% of changes in forest land use, with 96% of the average detection accuracy compared by visual interpretation. Therefore this research showed that the spatial data by the object-oriented segmentation method can be complementary to the one by a visual interpretation method, and proved the possibility of automatically detecting and extracting changes in forest land use from multi-temporal aerial photographs.
서정호(Jeong Ho Seo),이우균(Woo Kyun Lee),함보영(Bo Young Ham),손요완(Yo Whan Son) 한국산림과학회 2001 한국산림과학회지 Vol.90 No.6
In this study, the relationship between growth factors for Pinus densiflora stands in Anmyun-Island was analyzed and dynamic growth model was prepared. A total of 96 sample plots was investigated in which dbh and height of individual trees were measured. From these plot data, quadratic mean dbh, mean height, dominant tree height, stem number per ha, basal area per ha and volume per ha were estimated. Several regression equations between growth factors were derived using NLIN and REG procedure of SAS. And dynamic growth model, in which the equations were interactively linked, was prepared for the prediction of stand growth and yield under different management regime. The predictions of dynamic growth model were found to be coincided with general growth principles. The dynamic growth model was considered as adequate for predicting growth and yield of Pinus densiflora stand in Anmyun-Island. In practice, the dynamic growth model can be applied for predicting the growth and development of stand for various forest treatments and for decision-making in forest management.