Year :
2014 | Volume:
1 | Issue:
1 | Pages :
1-5
Recognition and Extraction of RS images from
Remote Sensing Archives using Content Based
Texture Features
S.Suganya1
*,
J.Rethna Virgil Jeny, M.E, (Ph D), R.Raja Sekar, M.E.
- 1Anna University Chennai, PG Scholar, Department of Computer Science Engineering
Sardar Raja College of Engineering, India, IN
Retrieval of remote sensing image from the large database is the difficult task. To solve this problem in this
paper we are presenting the multiscale descriptors like circular covariance histogram, rotation invariant point triplets
are used which are the effective texture descriptors. To overcome some of the limitations of the circular covariance
histogram and rotation invariant point triplet, we introduce new descriptors Fourier power spectrum and quasi flat
zone which consider the important texture properties like coarseness and directionality in the image which is the
important property of the remote sensing images. The proposed system achieves best retrieval performance and also
reduces the length of the feature vector. UC Merced land use land cover data set is used to evaluate the effectiveness
of the descriptors which is the recently introduced dataset.
Keywords: Remote sensing, Texture descriptors, Morphological operators, content based image retrieval (CBIR).
Citation: S.Suganya*, S.Suganya (
2014),
Recognition and Extraction of RS images from
Remote Sensing Archives using Content Based
Texture Features.
,
1(1):
1-5
Received: 03/03/2014; Accepted: 28/03/2014;
Published: 13/09/2024