We propose a novel method for the parsing of images and scanned point cloud in large-scale street environment. The proposed method significantly reduces the intensive labeling cost in previous works by automatically generating training data from the input data. The automatic generation of training data begins with the initialization of training data with weak priors in the street environment, followed by a filtering scheme to remove mislabeled training samples. We formulate the filtering as a binary labeling optimization problem over a conditional random filed that we call object graph, simultaneously integrating spatial smoothness preference and label consistency between 2D and 3D. Toward the final parsing, with the automatically generated...
High density point clouds of urban scenes are used to identify object classes like buildings, vegeta...
We introduce a method to texture 3D urban models with photographs that even works for Google Streetv...
International audienceScene understanding of large-scale 3D point clouds of an outer space is still ...
Urban scene parsing, segmenting interested objects and identifying their categories in urban scenes,...
3D urban maps with semantic labels and metric information are not only essential for the next genera...
An essential prerequisite for unleashing the potential of supervised deep learning algorithms in the...
We propose a simple but powerful multi-view semantic segmentation framework for images captured by a...
This is the CITY-OSM dataset used in the journal publication "Learning Aerial Image Segmentation Fro...
In this paper we present a novel street scene semantic recognition framework, which takes advantage ...
Abstract. In this paper, we propose a robust supervised label transfer method for the semantic segme...
Training convolutional networks for semantic segmentation requires per-pixel ground truth labels, wh...
Scene understanding of large-scale 3D point clouds of an outer space is still a challenging task. Co...
In this work, we report a novel way of generating ground truth dataset for analyzing point cloud fro...
This paper describes a method for extracting roads from a large scale unstructured 3D point cloud of...
The problems of dense stereo reconstruction and object class segmentation can both be formulated as ...
High density point clouds of urban scenes are used to identify object classes like buildings, vegeta...
We introduce a method to texture 3D urban models with photographs that even works for Google Streetv...
International audienceScene understanding of large-scale 3D point clouds of an outer space is still ...
Urban scene parsing, segmenting interested objects and identifying their categories in urban scenes,...
3D urban maps with semantic labels and metric information are not only essential for the next genera...
An essential prerequisite for unleashing the potential of supervised deep learning algorithms in the...
We propose a simple but powerful multi-view semantic segmentation framework for images captured by a...
This is the CITY-OSM dataset used in the journal publication "Learning Aerial Image Segmentation Fro...
In this paper we present a novel street scene semantic recognition framework, which takes advantage ...
Abstract. In this paper, we propose a robust supervised label transfer method for the semantic segme...
Training convolutional networks for semantic segmentation requires per-pixel ground truth labels, wh...
Scene understanding of large-scale 3D point clouds of an outer space is still a challenging task. Co...
In this work, we report a novel way of generating ground truth dataset for analyzing point cloud fro...
This paper describes a method for extracting roads from a large scale unstructured 3D point cloud of...
The problems of dense stereo reconstruction and object class segmentation can both be formulated as ...
High density point clouds of urban scenes are used to identify object classes like buildings, vegeta...
We introduce a method to texture 3D urban models with photographs that even works for Google Streetv...
International audienceScene understanding of large-scale 3D point clouds of an outer space is still ...