Image retrieval approach based on local texture information derived from
predefined patterns and spatial domain information
- URL: http://arxiv.org/abs/1912.12978v1
- Date: Mon, 30 Dec 2019 16:11:04 GMT
- Title: Image retrieval approach based on local texture information derived from
predefined patterns and spatial domain information
- Authors: Nazgol Hor, Shervan Fekri-Ershad
- Abstract summary: The performance of the proposed method is evaluated in terms of precision and recall on the Simplicity database.
The comparative results showed that the proposed approach offers higher precision rate than many known methods.
- Score: 14.620086904601472
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: With the development of Information technology and communication, a large
part of the databases is dedicated to images and videos. Thus retrieving images
related to a query image from a large database has become an important area of
research in computer vision. Until now, there are various methods of image
retrieval that try to define image contents by texture, color or shape
properties. In this paper, a method is presented for image retrieval based on a
combination of local texture information derived from two different texture
descriptors. First, the color channels of the input image are separated. The
texture information is extracted using two descriptors such as evaluated local
binary patterns and predefined pattern units. After extracting the features,
the similarity matching is done based on distance criteria. The performance of
the proposed method is evaluated in terms of precision and recall on the
Simplicity database. The comparative results showed that the proposed approach
offers higher precision rate than many known methods.
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