Local Label Descriptor for Example based Semantic Image Labeling

Yiqing Yang Zhouyuan Li Li Zhang
University of Wisconsin-Madison University of Wisconsin-Madison University of Wisconsin-Madison
Christopher Murphy James Ver Hoeve Hongrui Jiang
University of California, Davis University of Wisconsin-Madison University of Wisconsin-Madison

 

Abstract

In this paper we introduce the concept of local label descriptor, which is a concatenation of label histograms for each cell in a patch. Local label descriptors alleviate the label patch misalignment issue in combining structured label predictions for semantic image labeling. Given an input image, we solve for a label map whose local label descriptors can be approximated as a sparse convex combination of exemplar label descriptors in the training data, where the sparsity is regularized by the similarity measure between the local feature descriptor of the input image an that of the exemplars in the training data set. Low-level image over-segmentation can be incorporated into our formulation to improve efficiency. Our formulation and algorithm compare favorably with the baseline method on the CamVid and Barcelona datasets.

 
Publication
Yiqing Yang, Zhouyuan Li, Li Zhang, Christopher Murphy, James Ver Hoeve, Hongrui Jiang. Local Label Descriptor for Example based Semantic Image Labeling, European Conference on Computer Vision (ECCV), October, 2012. [Author's version: PDF 2.0 MB]
The original publication is available at www.springerlink.com, here.
 
[Supplemental Material: PDF 1.5 MB]
[Poster: PDF 3.5 MB]
 
Acknowledgements
This work is supported in part by NSF EFRI-BSBA-0937847, NSF IIS-0845916, IIS-0916441, a Sloan Research Fellowship, a Packard Fellowship for Science and Engineering, and a gift donation from Eastman Kodak Compnay.
 
Supplemental Video (latest implementation using image pyramid; each frame is processed independenly from other frames.)
Download [MP4 6.2 MB]. Click to play the following streaming version of the video.
labeldesc Video