In this paper we present a hierarchical and contextual model for aerial image understanding. Our model organizes objects (cars, roofs, roads, trees, parking lots) in aerial scenes into hierarchical groups whose appearances and configurations are determined by statistical constraints (e.g. relative position, relative scale, etc.). Our hierarchy is a non-recursive grammar for objects in aerial images comprised of layers of nodes that can each decompose into a number of different configurations. This allows us to generate and recognize a vast number of scenes with relatively few rules. We present a minimax entropy framework for learning the statistical constraints between objects and show that this learned context allows us to rule out unlikel...
Ce travail concerne l'interprétation du contenu des images aériennes optiques panchromatiques très h...
We present BEAMER: a new spatially exploitative approach to learning object de-tectors which shows e...
In this paper we consider the problem of object parsing, namely detecting an object and its componen...
In this paper, we focus on the problem of contextual aggregation in the semantic segmentation of aer...
Abstract. Our current field of work is pixelwise classification and la-beling of multiple objects in...
The visual enrichment of digital terrain models with plausible synthetic detail requires the segment...
In this paper we consider the problem of object parsing, namely detecting an object and its componen...
With the advent of drones, aerial video analysis becomes increasingly important; yet, it has receive...
Advances in computer vision have led to development of algorithms that are able to extract semantic ...
When approaching the semantic segmentation of overhead imagery in the decimeter spatial resolution r...
Recognizing aerial image categories is useful for scene annotation and surveillance. Local features ...
This paper presents a semantic method for aerial image segmentation. Multi-class aerial images are o...
The object detection in aerial images is one of the most commonly used tasks in the wide-range of co...
Categorizing highly complex aerial scenes is quite strenuous due to the presence of detailed informa...
Building extraction from aerial images has several applications in problems such as urban planning, ...
Ce travail concerne l'interprétation du contenu des images aériennes optiques panchromatiques très h...
We present BEAMER: a new spatially exploitative approach to learning object de-tectors which shows e...
In this paper we consider the problem of object parsing, namely detecting an object and its componen...
In this paper, we focus on the problem of contextual aggregation in the semantic segmentation of aer...
Abstract. Our current field of work is pixelwise classification and la-beling of multiple objects in...
The visual enrichment of digital terrain models with plausible synthetic detail requires the segment...
In this paper we consider the problem of object parsing, namely detecting an object and its componen...
With the advent of drones, aerial video analysis becomes increasingly important; yet, it has receive...
Advances in computer vision have led to development of algorithms that are able to extract semantic ...
When approaching the semantic segmentation of overhead imagery in the decimeter spatial resolution r...
Recognizing aerial image categories is useful for scene annotation and surveillance. Local features ...
This paper presents a semantic method for aerial image segmentation. Multi-class aerial images are o...
The object detection in aerial images is one of the most commonly used tasks in the wide-range of co...
Categorizing highly complex aerial scenes is quite strenuous due to the presence of detailed informa...
Building extraction from aerial images has several applications in problems such as urban planning, ...
Ce travail concerne l'interprétation du contenu des images aériennes optiques panchromatiques très h...
We present BEAMER: a new spatially exploitative approach to learning object de-tectors which shows e...
In this paper we consider the problem of object parsing, namely detecting an object and its componen...