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Pages : 63-81    自監督式深度學習影像匹配應用於福衛光學衛星影像幾何校正
論文名稱 自監督式深度學習影像匹配應用於福衛光學衛星影像幾何校正
Title Self-supervised Deep-learning-based Image Matching for FORMOSAT Optical Satellite Image Orthorectification
作者 吳菉、張雅筑、林柏毅、林昭宏、曾義星、張立雨、張莉雪、李彥玲
Author Lu Wu, Ya-Chu Chang, Bo-Yi Lin, Chao-Hung Lin, Yi-Hsing Tseng, Li-Yu Chang, Li-Hsueh Chang, Yen-Ling Lee
中文摘要 標準幾何校正流程在獲取控制點上花費大量人力及時間,為使衛星影像呈現精確的幾何成像,且提升獲取衛星影像之效率,本研究提出一新穎的自動化衛星影像幾何校正流程。藉由自監督深度學習影像匹配演算法及影像匹配策略,於衛星影像中自動化獲取更多的顯著特徵作為影像控制點,使得衛星影像幾何校正流程更穩健且便捷。實驗結果表明,自動化幾何校正流程不僅具穩定性且具適應性,幾何校正結果在福衛五號2米空間解析度下誤差約為2至4像元。
Abstract The standard orthorectification process takes a lot of manpower and time to obtain control points. To correctly represent the image geometry on satellite images and improve the efficiency of satellite image orthorectification, a novel method for automatic satellite image orthorectification is proposed. In this study, a robust satellite image matching process is processed to obtain image control points, which adopted. Different from traditional labor-intensive methods, a novel image matching method is adopted to find image control points both on target images and an orthorectified reference image, which is adopted self-supervised deep learning image matching algorithm. This strategy makes the ortho-rectification process become automatic, robust, and attempts to distinguish more salient features than traditional methods in satellite images. The experimental results show that the automatic orthorectification process is not only stable but also adaptable. The quantity assessment is performed using root mean square error, and the accuracy of satellite image orthorectification result is 2 to 4 pixels under the 2-meter spatial resolution of FORMOSAT-5 images.
關鍵字 幾何校正、有理函數模型、深度學習、基於特徵的影像匹配、光學衛星影像
Keywords Optical Satellite Image, Image Orthorectification, Rational Function Model, Deep Learning, Feature-Based Image Matching
Pages : 83-102    應用Taiwan Data Cube於多時期衛星影像之崩塌地分析
論文名稱 應用Taiwan Data Cube於多時期衛星影像之崩塌地分析
Title Landslide Area Analysis with Temporal Satellite Images by Using Taiwan Data Cube
作者 黃鈺涵、曾義星
Author Yu-Han Huang, Yi-Hsing Tseng
中文摘要 臺灣受地質和地理環境影響,崩塌災害頻繁發生,然而遙感探測的特點對於監測分析環境敏感地至關重要。本研究基於衛星影像時間序列概念,透過 Taiwan Data Cube 平台建立環境敏感地監測模型,進行常態化差異植生指標計算以及最大似然分類法,在時間面向中,可以觀察出該地環境的長期趨勢與變化;在空間面向中,則可以找出崩塌地識別之門檻值,藉由影像差分法判斷新生崩塌地的面積變化以及位置。本研究以六龜區及梅山明隧道作為試驗區,經由建立衛星影像時間序列,達到解析區域時空變化的目標,讓地理空間資訊應用更加全面。
Abstract Due to geographical and geological factors, typhoons hit Taiwan frequently. It may cause serious disasters, so monitoring the condition of landslide area is critical. Based on the concept of satellite image time series (SITS), this study is to establish a long-term monitoring model by Normalized Difference Vegetation Index (NDVI) calculations and Maximum Likelihood Classification (MLC). For the temporal view, long-term changes in geologically sensitive area can be found out. For the spatial view, the interpretation standard can also be identified, and the location of the new landslide can also be distinguished by “Image Differencing”. This study selects “Liouguei District” and “Meishan open-cut tunnel” as the regions of interest. Through the establishment of satellite image time series, the goal of analyzing regional temporal and spatial changes is achieved, making the application of geospatial information more comprehensive.
關鍵字 Taiwan Data Cube、衛星影像時間序列、常態化差異植生指標、最大似然分類
Keywords Taiwan Data Cube (TWDC), Satellite Image Time Series (SITS), Normalized Difference Vegetation Index (NDVI), Maximum Likelihood Classification (MLC)
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