TOPOGRAFİK BİLGİLER VE UYDU GÖRÜNTÜ VERİLERİNİ KULLANARAK 3 BOYUTLU ALAN TANIMA SİSTEMİ

Bu çalışmada üç boyutlu topografik veriler, iki boyutlu havadan çekilmiş görüntüler ve uydu görüntüleri kullanılarak alan tanıma sistemi geliştirilmiştir. Bu sistem için üç boyutlu Nesne-Bilgileri-Temelli BileşimselFotogrametri teknolojisi kullanılmıştır. Bu teknoloji alanlarda gerçek veriler kullanılarak ilk kez uygulanmıştır. Böylece tanıma işlemi için gereken güvenilir noktaların seçimi yapılırken alan üzerindeki binalar ve yollar gibi önemli arazi elemanları da kullanılmıştır. Teknolojinin, binalar ve yollar gibi yapıların bulunduğu alanlarda ve insan yapılarının bulunmadığı doğal tepeler ve çukurlar şeklindeki arazi yüzeylerinde uygulanabilirliği kanıtlanmıştır

3 DIMENSIONAL TERRAIN RECOGNITION SYSTEM BY USING TOPOGRAPHIC DATA AND SATELLITE IMAGES

In this study, a terrain recognition system is developed by using three dimensional topographic data, two dimensional aerial images and satellite images. For this system, three dimensional Object Knowledge Based Composite Photogrammetry Technology is used. This technology is applied to terrain areas for the first time by using real data. Thus when selecting the fiducial points, important area elements such as buildings and roads are used. Feasibility of the technology is proven for terrain areas which have structures such as buildings and roads, and have only hills and hollows without human made structures

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