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시계열 RADARSAT 자료를 이용한 농경지의 홍수피해 유형 분석

  • 이규성;이선일
    • Proceedings of the KSRS Conference
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    • 2000.04a
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    • pp.102-107
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    • 2000
  • 침수 피해지에 대한 신속하고 정확한 지도의 제작은 홍수피해 관리와 예방을 위한 중요한 자료로 사용된다. 타 위성영상에 비하여 기상조건에 관계없이 영상자료의 획득이 용이한 레이더 영상을 이용하여 홍수피해 분석을 위한 활용 가능성을 파악하고자 하였다. 1999년 여름 경기동 북부 지역에 발생한 홍수 사상을 사례지로 하여 C-band RADARSAT 위성영상을 촬영되었는데, 침수 시점인 8월 4일 영상과 그 전후 영상을 포함하여 네 시기의 영상을 이용하였다. 영상의 기하학적 보정, 잡음의 최소화, 방사보정 등의 처리 과정을 거친 후 네 시기의 영상에서 나타나는 논의 시기별 레이더반사신호의 변화를 분석하였다. 수면, 논, 밭, 산림 등의 다양한 지표물의 시기별 반사신호를 분석한 결과, 침수되었던 논에서 뚜렷한 반사신호의 차이를 관찰할 수 있었다. 또한 홍수 이후의 영상인 8월 14일 영상을 함께 분석함으로써 침수되었던 논의 복구 상태에 따른 차이를 구분할 수 있었다.

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Development of Three-dimensional Inversion Algorithm of Complex Resistivity Method (복소 전기비저항 3차원 역산 알고리듬 개발)

  • Son, Jeong-Sul;Shin, Seungwook;Park, Sam-Gyu
    • Geophysics and Geophysical Exploration
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    • v.24 no.4
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    • pp.180-193
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    • 2021
  • The complex resistivity method is an exploration technique that can obtain various characteristic information of underground media by measuring resistivity and phase in the frequency domain, and its utilization has recently increased. In this paper, a three-dimensional inversion algorithm for the CR data was developed to increase the utilization of this method. The Poisson equation, which can be applied when the electromagnetic coupling effect is ignored, was applied to the modeling, and the inversion algorithm was developed by modifying the existing algorithm by adopting comlex variables. In order to increase the stability of the inversion, a technique was introduced to automatically adjust the Lagrangian multiplier according to the ratio of the error vector and the model update vector. Furthermore, to compensate for the loss of data due to noisy phase data, a two-step inversion method that conducts inversion iterations using only resistivity data in the beginning and both of resistivity and phase data in the second half was developed. As a result of the experiment for the synthetic data, stable inversion results were obtained, and the validity to real data was also confirmed by applying the developed 3D inversion algorithm to the analysis of field data acquired near a hydrothermal mine.

Multi-stage Image Restoration for High Resolution Panchromatic Imagery (고해상도 범색 영상을 위한 다중 단계 영상 복원)

  • Lee, Sanghoon
    • Korean Journal of Remote Sensing
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    • v.32 no.6
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    • pp.551-566
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    • 2016
  • In the satellite remote sensing, the operational environment of the satellite sensor causes image degradation during the image acquisition. The degradation results in noise and blurring which badly affect identification and extraction of useful information in image data. Especially, the degradation gives bad influence in the analysis of images collected over the scene with complicate surface structure such as urban area. This study proposes a multi-stage image restoration to improve the accuracy of detailed analysis for the images collected over the complicate scene. The proposed method assumes a Gaussian additive noise, Markov random field of spatial continuity, and blurring proportional to the distance between the pixels. Point-Jacobian Iteration Maximum A Posteriori (PJI-MAP) estimation is employed to restore a degraded image. The multi-stage process includes the image segmentation performing region merging after pixel-linking. A dissimilarity coefficient combining homogeneity and contrast is proposed for image segmentation. In this study, the proposed method was quantitatively evaluated using simulation data and was also applied to the two panchromatic images of super-high resolution: Dubaisat-2 data of 1m resolution from LA, USA and KOMPSAT3 data of 0.7 m resolution from Daejeon in the Korean peninsula. The experimental results imply that it can improve analytical accuracy in the application of remote sensing high resolution panchromatic imagery.

A Short Seismic Reflection Survey for Delineating the Basement and the Upper Units of the Gomso Bay, Yellow Sea (곰소만 지역의 기반암 및 상부 층서 파악을 위한 시험 탄성파반사법 탐사)

  • Kim Ji-Soo;Ryang Woo-Hun;Han Soo-Hyung;Kim Hak-Soo
    • The Journal of Engineering Geology
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    • v.16 no.2 s.48
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    • pp.161-169
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    • 2006
  • A short seismic reflection survey was performed to map the basement and the upper units in the Gomso Bay. This research was mainly aimed at clarifying the basement by improving the signal-to-noise ratio in data processing steps. The strategies employed in this research included enhancement of the signal interfered with large-amplitude noise, through pre- and post-stack processing such as time-variant filtering, bad trace edit, careful muting after f-k filter and NMO correction. The subsurface structure mapped from this survey mainly consists of the top of basement and the upper three units, which were well correlated to the result from the previously conducted MT survey. Furthermore seismic section clarifies approximately 30m deep subhorizontal event of the top of the basement, which was not shown in the central portion of the MT section due to data qualify.

Design of a Multi-Sensor Data Simulator and Development of Data Fusion Algorithm (다중센서자료 시뮬레이터 설계 및 자료융합 알고리듬 개발)

  • Lee, Yong-Jae;Lee, Ja-Seong;Go, Seon-Jun;Song, Jong-Hwa
    • Journal of the Korean Society for Aeronautical & Space Sciences
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    • v.34 no.5
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    • pp.93-100
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    • 2006
  • This paper presents a multi-sensor data simulator and a data fusion algorithm for tracking high dynamic flight target from Radar and Telemetry System. The designed simulator generates time-asynchronous multiple sensor data with different data rates and communication delays. Measurement noises are incorporated by using realistic sensor models. The proposed fusion algorithm is designed by a 21st order distributed Kalman Filter which is based on the PVA model with sensor bias states. A fault detection and correction logics are included in the algorithm for bad data and sensor faults. The designed algorithm is verified by using both simulation data and actual real data.

Effects of Speckle Filtering on Synthetic Aperture Radar (SAR) Imagery (레이더 영상자료의 Speckle 필터링 효과)

  • 이규성
    • Korean Journal of Remote Sensing
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    • v.12 no.2
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    • pp.155-168
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    • 1996
  • Speckle noise has been a primary concern to many applications of synthetic aperture radar (SAR) imagery. In recent years, several satellites with radar imaging systems were launched and the use of SAR data are expected to be increased rapidly The objectives of this study are to provide introductory understanding on radar speckle filtering and to compare the effects of several filtering methods that are relatively unknown to user community. Two study sites were extracted from the RADARSAT SAR data obtained over the suburban areas near Seoul. The study sites include relatively homogeneous cover types, such as reservoir, parking lot, rice pad, and deciduous forest. Five filters (mean filter, median filter, sigma filter, local statistics filter, and autocorrelation filter) were applied to the SAR imagery and their effects were evaluated from the aspects of both image smoothing and edge preservation. In overall, the evaluation results indicate that the local statistics filter and autocorrelation filter, that are based on a speckle model, are more effective to suppress speckle within homogeneous cover type while maintaining the edge sharpness between cover types.

Recent Trends in the Application of Extreme Learning Machines for Online Time Series Data (온라인 시계열 자료를 위한 익스트림 러닝머신 적용의 최근 동향)

  • YeoChang Yoon
    • The Journal of Bigdata
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    • v.8 no.2
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    • pp.15-25
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    • 2023
  • Extreme learning machines (ELMs) are a major analytical method in various prediction fields. ELMs can accurately predict even if the data contains noise or is nonlinear by learning the complex patterns of time series data through optimal learning. This study presents the recent trends of machine learning models that are mainly studied as tools for analyzing online time series data, along with the application characteristics using existing algorithms. In order to efficiently learn large-scale online data that is continuously and explosively generated, it is necessary to have a learning technology that can perform well even in properties that can evolve in various ways. Therefore, this study examines a comprehensive overview of the latest machine learning models applied to big data in the field of time series prediction, discusses the general characteristics of the latest models that learn online data, which is one of the major challenges of machine learning for big data, and how efficiently they can learn and use online time series data for prediction, and proposes alternatives.

Prediction Interval Estimation in Ttansformed ARMA Models (변환된 자기회귀이동평균 모형에서의 예측구간추정)

  • Cho, Hye-Min;Oh, Sung-Un;Yeo, In-Kwon
    • The Korean Journal of Applied Statistics
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    • v.20 no.3
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    • pp.541-550
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    • 2007
  • One of main aspects of time series analysis is to forecast future values of series based on values up to a given time. The prediction interval for future values is usually obtained under the normality assumption. When the assumption is seriously violated, a transformation of data may permit the valid use of the normal theory. We investigate the prediction problem for future values in the original scale when transformations are applied in ARMA models. In this paper, we introduce the methodology based on Yeo-Johnson transformation to solve the problem of skewed data whose modelling is relatively difficult in the analysis of time series. Simulation studies show that the coverage probabilities of proposed intervals are closer to the nominal level than those of usual intervals.

확장칼만 필터를 이용한 인공 위성의 궤도 추정에 관한 모의 실험

  • 손건호;최규홍
    • Bulletin of the Korean Space Science Society
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    • 1993.04a
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    • pp.19-19
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    • 1993
  • 위성의 실제 궤도를 실시간하에서 추정(real-time estimation)하기 위해 지구 비대칭 중력장, 지구 대기의 저항력,그리고, 태양과 달의 위성체에 대한 섭동의 영향을 받는 지구 근방의 위성을 동력학적 모델로 선택하였다. 위성 관측소에서 얻게될 가상의 위성 궤도 자료들은 실제 관측에서 나타날 수 있는 관측 잡음(measurement noise)뿐 아니라 추적소 고도 등의 불확실한 요소들을 포함한다. 또한 수치 모델에서 고려치 못한 섭적 난수에 의해 만들었다. 확장 칼만 필터(Extended Kalman Filter)의 특성을 알아 보기 위해 일차원에서의 자유낙하체에 대한 거리와 속도 추정의 모의 실험을 비교하였고, 뱃치추정 알고리즘, 순차 추정 알고리즘의 모의 실험이 거리변화율의 자료를 이용하여 확장 칼만 필터와 비교하였다. 그 결과, 확장 칼만 필터 알고리즘은 빠른 수렴 속도를 갖는 특성을 가지며, 실시간하에서 완전하지 못한 수치 모델로 실제 궤도를 결정하고 궤도 요소를 추정하는데 효과적임을 알 수 있다.

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Cluster Feature Selection using Entropy Weighting and SVD (엔트로피 가중치 및 SVD를 이용한 군집 특징 선택)

  • Lee, Young-Seok;Lee, Soo-Won
    • Journal of KIISE:Software and Applications
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    • v.29 no.4
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    • pp.248-257
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    • 2002
  • Clustering is a method for grouping objects with similar properties into a same cluster. SVD(Singular Value Decomposition) is known as an efficient preprocessing method for clustering because of dimension reduction and noise elimination for a high dimensional and sparse data set like E-Commerce data set. However, it is hard to evaluate the worth of original attributes because of information loss of a converted data set by SVD. This research proposes a cluster feature selection method, called ENTROPY-SVD, to find important attributes for each cluster based on entropy weighting and SVD. Using SVD, one can take advantage of the latent structures in the association of attributes with similar objects and, using entropy weighting one can find highly dense attributes for each cluster. This paper also proposes a model-based collaborative filtering recommendation system with ENTROPY-SVD, called CFS-CF and evaluates its efficiency and utilization.