In this article we use a combination of neural networks with other techniques for the analysis of orthophotos. Our goal is to obtain results that can serve as a useful groundwork for interactive exploration of the terrain in detail. In our approach we split an aerial photo into a regular grid of segments and for each segment we detect a set of features. These features depict the segment from the viewpoint of a general image analysis (color, tint, etc.) as well as from the viewpoint of the shapes in the segment. We perform clustering based on the Formal Concept Analysis (FCA) and Non-negative Matrix Factorization (NMF) methods and project the results using effective visualization techniques back to the aerial photo. The FCA as a tool allows ...
The paper describes a newly developed object-based extraction method named MORPHSCALE. It is a multi...
The recognition of points of interest leads to the detection and consequent specification of the val...
This paper describes the application a binary neural network, the Advanced Distributed Associative M...
International audienceThis paper addresses the question of the detection of small targets (vehicles)...
The paper presents an innovative approach that can assist survey methods by applying AI algorithms t...
Version finale corrigée grâce aux remarques des reviewers.International audienceThis paper addresses...
This paper presents a semantic method for aerial image segmentation. Multi-class aerial images are o...
Abstract. The present paper discusses the image processing algorithms that treat the problem of imag...
The object of this work is the recognition algorithms of aerial photography objects, namely, the ana...
In this paper, oblique airborne images with very high resolution are used to address the problem fro...
Organic studies inspire cues for modelling logic in image processing and become a basis for the deve...
The paper describes the method of objects detection on aerial photographs using neural networks. The...
During the last decade, laser scanning and automated photogrammetric techniques, proved that it is p...
This paper considers a model of the neural network for semantically segmenting the images of monitor...
This paper considers a model of the neural network for semantically segmenting the images of monitor...
The paper describes a newly developed object-based extraction method named MORPHSCALE. It is a multi...
The recognition of points of interest leads to the detection and consequent specification of the val...
This paper describes the application a binary neural network, the Advanced Distributed Associative M...
International audienceThis paper addresses the question of the detection of small targets (vehicles)...
The paper presents an innovative approach that can assist survey methods by applying AI algorithms t...
Version finale corrigée grâce aux remarques des reviewers.International audienceThis paper addresses...
This paper presents a semantic method for aerial image segmentation. Multi-class aerial images are o...
Abstract. The present paper discusses the image processing algorithms that treat the problem of imag...
The object of this work is the recognition algorithms of aerial photography objects, namely, the ana...
In this paper, oblique airborne images with very high resolution are used to address the problem fro...
Organic studies inspire cues for modelling logic in image processing and become a basis for the deve...
The paper describes the method of objects detection on aerial photographs using neural networks. The...
During the last decade, laser scanning and automated photogrammetric techniques, proved that it is p...
This paper considers a model of the neural network for semantically segmenting the images of monitor...
This paper considers a model of the neural network for semantically segmenting the images of monitor...
The paper describes a newly developed object-based extraction method named MORPHSCALE. It is a multi...
The recognition of points of interest leads to the detection and consequent specification of the val...
This paper describes the application a binary neural network, the Advanced Distributed Associative M...