Parametric Texture Model based on Joint Statistics
نویسندگان
چکیده
Texture images are a special class of images that are spatially homogeneous and consist of repeated elements, often subject some randomization in their location, size, color, orientation, etc. Textures can be classified into different classes or groups based on their structure and origin. Figure 1 gives some example textures. Textures are widely used in varied fields ranging from bio medical imaging to computer graphics. The flexibility and advantage of texture images is that they can be statistically modeled.
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