Describing Images using a Multilayer Framework based on Qualitative Spatial Models

To date most research in image processing has been based on quantitative representations of image features using pixel values, however, humans often use abstract and semantic knowledge to describe and analyze images. To enhance cognitive adequacy and tractability, we here present a multilayer framew...

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Bibliographic Details
Main Authors: Tao Wang, Hui Shi
Format: Article
Language:English
Published: New Prairie Press 2015-12-01
Series:The Baltic International Yearbook of Cognition, Logic and Communication
Subjects:
Online Access:http://newprairiepress.org/cgi/viewcontent.cgi?article=1104&context=biyclc
Description
Summary:To date most research in image processing has been based on quantitative representations of image features using pixel values, however, humans often use abstract and semantic knowledge to describe and analyze images. To enhance cognitive adequacy and tractability, we here present a multilayer framework based on qualitative spatial models. The layout features of segmented images are defined by qualitative spatial models which we introduce, and represented as a set of qualitative spatial constraints. Assigned different semantic and context knowledge, the image segments and the qualitative spatial constraints are interpreted from different perspectives. Finally, the knowledge layer of the framework enables us to describe the image in a natural way by integrating the domain-specified semantic constraints and the spatial constraints.
ISSN:1944-3676