posted on 2008-01-01, 00:00authored byMarius Leordeanu, Martial Hebert
Grouping was recognized in computer vision early on as having the potential of improving both matching and recognition.
Most papers consider grouping as a segmentation problem and a hard decision is made about which pixels in the image
belong to the same object. In this paper we instead focus on soft pairwise grouping, that is computing affinities between pairs
of pixels that reflect how likely that pair is to belong to the same object. This fits perfectly with our recognition approach,
where we consider pairwise relationships between features/pixels. Some other papers also considered soft pairwise grouping
between features, but they focused more on geometry than appearance. In this paper we take a different approach and show
how color could also be used for pairwise grouping. We present a simple but effective method to group pixels based on
color statistics. By using only color information and no prior higher level knowledge about objects and scenes we develop
an efficient classifier that can separate the pixels that belong to the same object from those that do not. In the context of
segmentation where color is also used only nearby pixels are generally considered, and very simple color information is
taken into account. We use global color information instead and develop an efficient algorithm that can successfully classify
even pairs of pixels that are far apart