Abstract |
: |
There are numbers of methods prevailing for Image
Mining Techniques. This Paper includes the features of four
techniques I,e Color Histogram, Color moment, Texture, and
Edge Histogram Descriptor. The nature of the Image is
basically based on the Human Perception of the Image. The
Machine interpretation of the Image is based on the
Contours and surfaces of the Images. The study of the Image
Mining is a very challenging task because it involves the
Pattern Recognition which is a very important tool for the
Machine Vision system. A combination of four feature
extraction methods namely color Histogram, Color Moment,
texture, and Edge Histogram Descriptor. There is a
provision to add new features in future for better retrieval
efficiency. In this paper the combination of the four
techniques are used and the Euclidian distances are
calculated of the every features are added and the averages
are made .The user interface is provided by the Mat lab.
The image properties analyzed in this work are by using
computer vision and image processing algorithms. For color
the histogram of images are computed, for texture co
occurrence matrix based entropy, energy, etc, are calculated
and for edge density it is Edge Histogram Descriptor (EHD)
that is found. For retrieval of images, the averages of the
four techniques are made and the resultant Image is
retrieved.
|