Channel Coding for Joint Colour and Depth Segmentation
Marcus Wallenberg, Michael Felsberg, Per-Erik Forssén, Babette DellenDAGM11
Deutsche Arbeitsgemeinschaft für Mustererkennung (DAGM11)
Volume LNCS 6835, Pages 306-315
August-September 2011
Abstract
Segmentation is an important preprocessing step in many applications. Compared to colour segmentation, fusion of colour and depth greatly improves the segmentation result. Such a fusion is easy to do by stacking measurements in different value dimensions, but there are better ways. In this paper we perform fusion using the channel representation, and demonstrate how a state-of-the-art segmentation algorithm can be modified to use channel values as inputs. We evaluate segmentation results on data collected using the Microsoft Kinect peripheral for Xbox 360, using the superparamagnetic clustering algorithm. Our experiments show that depth gradients are more useful than depth values for segmentation, and that channel coding both colour and depth gradients makes tuned parameter settings generalise better to novel images.
Full Paper
Portable document format file PDF (On-line proceedings available at the Springer website.
Bibtex entry
@InProceedings{wallenberg11b, author = {Marcus Wallenberg and Michael Felsberg and Per-Erik Forss\'en and Babette Dellen}, title = {Channel Coding for Joint Colour and Depth Segmentation}, booktitle = {Deutsche Arbeitsgemeinschaft f\"ur Mustererkennung ({DAGM11})}, year = {2011}, month = {August-September}, volume = {{LNCS 6835}}, pages = {306--315}, isbn = {978-3-642-23122-3} }
Per-Erik Forssén
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