DocumentCode
744625
Title
Shape Retrieval With Geometrically Characterized Contour Partitions
Author
Matsuda, Yuma ; Ogawa, Masatsugu ; Yano, Masafumi
Author_Institution
Cloud Syst. Res. Labs., NEC Corp., Kawasaki, Japan
Volume
3
fYear
2015
fDate
7/7/1905 12:00:00 AM
Firstpage
1161
Lastpage
1178
Abstract
This paper proposes a new computational method for retrieving shapes under unpredictable conditions such as when occlusion, geometric distortion, and differences in image resolution occur simultaneously. The human visual system retrieves shapes from incomplete information in the real world, and it has inspired a lot of computational methods of retrieving shapes. In order to retrieve shapes, the observed shapes are decided to be alike or unlike remembered shapes in memory after the comparison of these shapes. To compare the observed and remembered shapes, they must first be appropriately represented so that the points on each shape can be mapped and compared. For this reason, the shape retrieval process needs an appropriate shape representation and shape mapping methods. Moreover, the shape representations should be normalized before the mapping process. However, a normalization process for representations under unpredictable conditions has not yet been established. In this paper, we describe a shape retrieval method that enables us to retrieve shapes under unpredictable conditions with a suitable normalization process. Using curvature partition and angle-length profile, our shape retrieval method normalizes the shape representation before it does the mapping. As a result, unlike the previously proposed methods, it can be used under unpredictable conditions such as when occlusion, geometric distortion, and differences in image resolution occur simultaneously.
Keywords
geometry; image representation; image resolution; image retrieval; angle-length profile; curvature partition; geometric characterized contour partitions; human visual system; image resolution; normalization process; shape mapping methods; shape representation; shape retrieval process; Computational modeling; Distortion; Geometric parameters; Image resolution; Occlusion; Shape analysis; Visual systems; Shape recognition; curvature partition; geometric parameter; occlusion; shape recognition; shape retrieval;
fLanguage
English
Journal_Title
Access, IEEE
Publisher
ieee
ISSN
2169-3536
Type
jour
DOI
10.1109/ACCESS.2015.2451627
Filename
7145382
Link To Document