The visual enrichment of digital terrain models with plausible synthetic detail requires the segmentation of aerial images into a suitable collection of categories. In this paper we present a complete pipeline for segmenting high-resolution aerial images into a user-defined set of categories distinguishing e.g. terrain, sand, snow, water, and different types of vegetation. This segmentation-for-synthesis problem implies that per-pixel categories must be established according to the algorithms chosen for rendering the synthetic detail. This precludes the definition of a universal set of labels and hinders the construction of large training sets. Since artists might choose to add new categories on the fly, the whole pipeline must be robust ag...
We present an algorithm for extracting Level of Detail 2 (LOD2) building models from video streams c...
The landscapes on Earth are varied and complex, having been created by innumerous physical processes...
In this paper we present a hierarchical and contextual model for aerial image understanding. Our mod...
The visual enrichment of digital terrain models with plausible synthetic detail requires the segment...
Abstract—This letter presents a benchmarking study for aerial image segmentation. We construct an im...
The purpose of this research is to enhance the efficiency of the task of extracting elevation data f...
Abstract. Our current field of work is pixelwise classification and la-beling of multiple objects in...
Semantic segmentation of aerial images is the ability to assign labels to all pixels of an image. It...
This paper presents a semantic method for aerial image segmentation. Multi-class aerial images are o...
During the last years, we have witnessed significant improvements in digital terrain modeling, mainl...
Abstract—In this paper, we present an example-based system for terrain synthesis. In our approach, p...
Despite recent advances in surveying techniques, publicly available Digital Elevation Models (DEMs) ...
In the last decade, the use of Machine Learning in aerial imagery data processing has multiplied. Th...
A wide variety of image processing applications require segmentation and classification ofimages. Th...
The recent advancements made in the field of computer vision, along with the ever increasing rate of...
We present an algorithm for extracting Level of Detail 2 (LOD2) building models from video streams c...
The landscapes on Earth are varied and complex, having been created by innumerous physical processes...
In this paper we present a hierarchical and contextual model for aerial image understanding. Our mod...
The visual enrichment of digital terrain models with plausible synthetic detail requires the segment...
Abstract—This letter presents a benchmarking study for aerial image segmentation. We construct an im...
The purpose of this research is to enhance the efficiency of the task of extracting elevation data f...
Abstract. Our current field of work is pixelwise classification and la-beling of multiple objects in...
Semantic segmentation of aerial images is the ability to assign labels to all pixels of an image. It...
This paper presents a semantic method for aerial image segmentation. Multi-class aerial images are o...
During the last years, we have witnessed significant improvements in digital terrain modeling, mainl...
Abstract—In this paper, we present an example-based system for terrain synthesis. In our approach, p...
Despite recent advances in surveying techniques, publicly available Digital Elevation Models (DEMs) ...
In the last decade, the use of Machine Learning in aerial imagery data processing has multiplied. Th...
A wide variety of image processing applications require segmentation and classification ofimages. Th...
The recent advancements made in the field of computer vision, along with the ever increasing rate of...
We present an algorithm for extracting Level of Detail 2 (LOD2) building models from video streams c...
The landscapes on Earth are varied and complex, having been created by innumerous physical processes...
In this paper we present a hierarchical and contextual model for aerial image understanding. Our mod...