Efficient 2D and 3D Facade Segmentation using Auto-Context
2017
Article
ps
This paper introduces a fast and efficient segmentation technique for 2D images and 3D point clouds of building facades. Facades of buildings are highly structured and consequently most methods that have been proposed for this problem aim to make use of this strong prior information. Contrary to most prior work, we are describing a system that is almost domain independent and consists of standard segmentation methods. We train a sequence of boosted decision trees using auto-context features. This is learned using stacked generalization. We find that this technique performs better, or comparable with all previous published methods and present empirical results on all available 2D and 3D facade benchmark datasets. The proposed method is simple to implement, easy to extend, and very efficient at test-time inference.
Author(s): | Raghudeep Gadde and Varun Jampani and Renaud Marlet and Peter Gehler |
Journal: | IEEE Transactions on Pattern Analysis and Machine Intelligence |
Year: | 2017 |
Department(s): | Perceiving Systems |
Research Project(s): |
Image Segmentation and Semantics
Facade Segmentation |
Bibtex Type: | Article (article) |
Paper Type: | Journal |
Links: |
arXiv
|
BibTex @article{gadde17facades, title = {Efficient 2D and 3D Facade Segmentation using Auto-Context}, author = {Gadde, Raghudeep and Jampani, Varun and Marlet, Renaud and Gehler, Peter}, journal = {IEEE Transactions on Pattern Analysis and Machine Intelligence}, year = {2017}, doi = {} } |