158 research outputs found
Detection and height estimation of buildings from SAR and optical images using conditional random fields
[no abstract
Towards Automatic SAR-Optical Stereogrammetry over Urban Areas using Very High Resolution Imagery
In this paper we discuss the potential and challenges regarding SAR-optical
stereogrammetry for urban areas, using very-high-resolution (VHR) remote
sensing imagery. Since we do this mainly from a geometrical point of view, we
first analyze the height reconstruction accuracy to be expected for different
stereogrammetric configurations. Then, we propose a strategy for simultaneous
tie point matching and 3D reconstruction, which exploits an epipolar-like
search window constraint. To drive the matching and ensure some robustness, we
combine different established handcrafted similarity measures. For the
experiments, we use real test data acquired by the Worldview-2, TerraSAR-X and
MEMPHIS sensors. Our results show that SAR-optical stereogrammetry using VHR
imagery is generally feasible with 3D positioning accuracies in the
meter-domain, although the matching of these strongly hetereogeneous
multi-sensor data remains very challenging. Keywords: Synthetic Aperture Radar
(SAR), optical images, remote sensing, data fusion, stereogrammetr
Interferometric Synthetic Aperture RADAR and Radargrammetry towards the Categorization of Building Changes
The purpose of this work is the investigation of SAR techniques relying on multi image acquisition for fully automatic and rapid change detection analysis at building level. In particular, the benefits and limitations of a complementary use of two specific SAR techniques, InSAR and radargrammetry, in an emergency context are examined in term of quickness, globality and accuracy. The analysis is performed using spaceborne SAR data
Buildings Detection in VHR SAR Images Using Fully Convolution Neural Networks
This paper addresses the highly challenging problem of automatically
detecting man-made structures especially buildings in very high resolution
(VHR) synthetic aperture radar (SAR) images. In this context, the paper has two
major contributions: Firstly, it presents a novel and generic workflow that
initially classifies the spaceborne TomoSAR point clouds generated by
processing VHR SAR image stacks using advanced interferometric techniques known
as SAR tomography (TomoSAR) into buildings and non-buildings with the aid
of auxiliary information (i.e., either using openly available 2-D building
footprints or adopting an optical image classification scheme) and later back
project the extracted building points onto the SAR imaging coordinates to
produce automatic large-scale benchmark labelled (buildings/non-buildings) SAR
datasets. Secondly, these labelled datasets (i.e., building masks) have been
utilized to construct and train the state-of-the-art deep Fully Convolution
Neural Networks with an additional Conditional Random Field represented as a
Recurrent Neural Network to detect building regions in a single VHR SAR image.
Such a cascaded formation has been successfully employed in computer vision and
remote sensing fields for optical image classification but, to our knowledge,
has not been applied to SAR images. The results of the building detection are
illustrated and validated over a TerraSAR-X VHR spotlight SAR image covering
approximately 39 km almost the whole city of Berlin with mean
pixel accuracies of around 93.84%Comment: Accepted publication in IEEE TGR
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