Web
Education
Viewing 1-6 of 6 total results
(PDF) Integration of Color and Texture Features in CBIR System
[12] P. S. Hiremath and J. Pujari, “ Content Based Image Retrieval based on Color, Texture and Shape features using Im age and its complement,” Int. J. Comput....
A chroma texture-based method in color image retrieval ...
With the development of computer vision and image databases, image retrieval, and especially the content-based image retrieval (CBIR), have become a hot issue. The key step in CBIR is the extraction of low-level features, such as color, texture, shape, and spatial relation [1] , [2] , [3] ....
An Improved CBIR Method Using Color and Texture Properties ...
[7] P. S. Hiremath and Jagadeesh Pujari "Content Based Image Retrieval based on Color, Texture and Shape features using Image and its complement", International Journal of Computer Science and Security, Vol. 1, No.4, Pp.25-35, 2010....
Enhancing the Precision of Walsh Wavelet Based Approach ...
Hiremath and Pujari [15] used all the three features, i.e. color, texture and shape for CBIR and achieved higher retrieval efficiency using image and its complement. Kek re et al. [16] discussed an image retrieval method based on the shape features extracted using the gradient operators and slope magnitude technique...
Design and Analysis of CBIR System using Hybrid PSO and K ...
Images have always been considered an effective medium for presenting visual data in many applications of industry and academia. With the development of technology, a large amount of images are being generated every day. Therefore, managing and indexing of images become essential in order to retrieve similar images effectively. In conventional systems, images are generally indexed with textual ...
A SPATIAL FEATURE BASED EFFICIENT CBIR SYSTEM FOR COLOR IMAGES
P. S. Hiremath, Jagadeesh Pujari, “Content Based Image Retrieval based on Color, Texture and Shape features using Image and its complement”. [3] Hossein Nezamabadi-pour and Saeid Saryazdi, “Object-Based Image Indexing and Retrieval in DCT Domain using Clustering Techniques”, Vol. 3 JANUARY 2005 ISSN 1307-6884. ......
|
iSEEK provides users with a Favorites library that allows them easy access to their most-used websites from any computer. If you have an iSEEK account, the content you just selected can be added to your Favorites page to be revisited any time you want.
If you would like to join the iSEEK community, click the "Register" button below to create your free iSEEK account. The resource you have selected will be added to your new Favorites library after you sign in for the first time.
If you already have an iSEEK account, click the button below to sign in and add the resource to your Favorites library.