A Novel Approach For Improvements In Content Based Image Retrieval
LAP Lambert Academic Publishing
€59.90
(inklusive MwSt.)
Verfügbarkeit: Titel wird für Sie produziert, Festbezug, bitte vormerken
Zusatztext
In CBIR the most common feature used are shape, colors, texture etc. To improve the accuracy of retrieval, it must look on the far side the classical features. The features which could easily be extracted from data could be considered. One of such feature is directionality of the image texture. Directional information can be represented in a compact manner by using transform like wavelet, Gabor, Radon etc. In this book we address this problem of using directional information to increase accuracy of CBIR. Content-based image retrieval (CBIR), additionally called question by image content (QBIC) and content-based visual info retrieval (CBVIR) is that the application of laptop vision techniques to the image retrieval drawback, that is, the matter of checking out digital pictures in giant databases. In this book we have compared classical histogram method for image retrieval with retrieval using Gabor, Wavelet, Complex Wavelet, Radon transform and Ridgelet transform. Image retrieval performance is estimated by using Precession and Recall.
Autorenportrait
Dr. Nilam N. Ghuge has obtained his Ph.D in Electronics Engineering. His area of research is Image Processing and Retrieval and Pattern Recognition. He has published papers in various journals like Elsevier, Springer, IEEE etc. He is working as Associate Professor and Head Department of Electrical Engineering at JSPM's BSIOTR, Wagholi, Pune.
Weitere Details
Erschienen: 18.05.2016
Umfang: 300 S.
Sprache: ENG
Einband: KT
Format: 1.9 x 22 x 15 cm
ISBN/EAN: 9783659875298
Umbreit-Nr.: 9390999
