Paper
12 February 2007 Attention trees and semantic paths
Author Affiliations +
Proceedings Volume 6492, Human Vision and Electronic Imaging XII; 649218 (2007) https://doi.org/10.1117/12.703480
Event: Electronic Imaging 2007, 2007, San Jose, CA, United States
Abstract
In the last few decades several techniques for image content extraction, often based on segmentation, have been proposed. It has been suggested that under the assumption of very general image content, segmentation becomes unstable and classification becomes unreliable. According to recent psychological theories, certain image regions attract the attention of human observers more than others and, generally, the image main meaning appears concentrated in those regions. Initially, regions attracting our attention are perceived as a whole and hypotheses on their content are formulated; successively the components of those regions are carefully analyzed and a more precise interpretation is reached. It is interesting to observe that an image decomposition process performed according to these psychological visual attention theories might present advantages with respect to a traditional segmentation approach. In this paper we propose an automatic procedure generating image decomposition based on the detection of visual attention regions. A new clustering algorithm taking advantage of the Delaunay- Voronoi diagrams for achieving the decomposition target is proposed. By applying that algorithm recursively, starting from the whole image, a transformation of the image into a tree of related meaningful regions is obtained (Attention Tree). Successively, a semantic interpretation of the leaf nodes is carried out by using a structure of Neural Networks (Neural Tree) assisted by a knowledge base (Ontology Net). Starting from leaf nodes, paths toward the root node across the Attention Tree are attempted. The task of the path consists in relating the semantics of each child-parent node pair and, consequently, in merging the corresponding image regions. The relationship detected in this way between two tree nodes generates, as a result, the extension of the interpreted image area through each step of the path. The construction of several Attention Trees has been performed and partial results will be shown.
© (2007) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Christian Giusti, Goffredo G. Pieroni, and Laura Pieroni "Attention trees and semantic paths", Proc. SPIE 6492, Human Vision and Electronic Imaging XII, 649218 (12 February 2007); https://doi.org/10.1117/12.703480
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KEYWORDS
Image segmentation

Neural networks

Image processing

Image processing algorithms and systems

Visualization

Detection and tracking algorithms

Genetic algorithms

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