Quantcast

Binary partition tree as an efficient representation for image processing, segmentation, and information retrieval.

Research paper by P P Salembier, L L Garrido

Indexed on: 08 Feb '08Published on: 08 Feb '08Published in: IEEE transactions on image processing : a publication of the IEEE Signal Processing Society



Abstract

This paper discusses the interest of binary partition trees as a region-oriented image representation. Binary partition trees concentrate in a compact and structured representation a set of meaningful regions that can be extracted from an image. They offer a multiscale representation of the image and define a translation invariant 2-connectivity rule among regions. As shown in this paper, this representation can be used for a large number of processing goals such as filtering, segmentation, information retrieval and visual browsing. Furthermore, the processing of the tree representation leads to very efficient algorithms. Finally, for some applications, it may be interesting to compute the binary partition tree once and to store it for subsequent use for various applications. In this context, the paper shows that the amount of bits necessary to encode a binary partition tree remains moderate.