International audienceWe present a supervised machine learning approach for classification of objects from sampled point data. The main idea consists in first abstracting the input object into planar parts at several scales, then discriminate between the different classes of objects solely through features derived from these planar shapes. Abstracting into planar shapes provides a means to both reduce the computational complexity and improve robustness to defects inherent to the acquisition process. Measuring statistical properties and relationships between planar shapes offers invariance to scale and orientation. A random forest is then used for solving the multiclass classification problem. We demonstrate the potential of our approach on ...
The number of approaches available for semantic segmentation of point clouds has grown exponentially...
There are a large number of publicly available datasets of 3D data, they generally suffer from some ...
The number of approaches available for semantic segmentation of point clouds has grown exponentially...
We present a supervised machine learning approach for classification of objects from sampled point d...
We present a supervised machine learning approach for classification of objects from sampled point d...
International audienceInterpreting 3D data such as point clouds or surface meshes depends heavily on...
We present a new framework for recognizing planar object classes, which is based on local feature de...
Geometric modeling and semantization of indoor scenes from sampled point data is an emerging researc...
A desirable 3D model classification system should be equipped with qualities such as highly correct ...
Object recognition has drawn great attention in industrial application especially in automated feedi...
International audienceWe present a method for planar shape detection and regularization from raw poi...
An interesting challenge in image processing is to classify shapes of polygons formed by selecting a...
International audienceIn this paper, we propose a new 3D object recognition method that employs a se...
International audienceThis paper presents an approach for detecting and tracking various types of pl...
Artifacts made by humans, such as items of furniture and houses, exhibit an enormous amount of varia...
The number of approaches available for semantic segmentation of point clouds has grown exponentially...
There are a large number of publicly available datasets of 3D data, they generally suffer from some ...
The number of approaches available for semantic segmentation of point clouds has grown exponentially...
We present a supervised machine learning approach for classification of objects from sampled point d...
We present a supervised machine learning approach for classification of objects from sampled point d...
International audienceInterpreting 3D data such as point clouds or surface meshes depends heavily on...
We present a new framework for recognizing planar object classes, which is based on local feature de...
Geometric modeling and semantization of indoor scenes from sampled point data is an emerging researc...
A desirable 3D model classification system should be equipped with qualities such as highly correct ...
Object recognition has drawn great attention in industrial application especially in automated feedi...
International audienceWe present a method for planar shape detection and regularization from raw poi...
An interesting challenge in image processing is to classify shapes of polygons formed by selecting a...
International audienceIn this paper, we propose a new 3D object recognition method that employs a se...
International audienceThis paper presents an approach for detecting and tracking various types of pl...
Artifacts made by humans, such as items of furniture and houses, exhibit an enormous amount of varia...
The number of approaches available for semantic segmentation of point clouds has grown exponentially...
There are a large number of publicly available datasets of 3D data, they generally suffer from some ...
The number of approaches available for semantic segmentation of point clouds has grown exponentially...