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It is easy to learn to use Susie and, given suitable optics, an experienced image analyst can very quickly understand the nature of the pictures he is given and develop a suitable strategy for processing them.
Further more the new algorithm can provide more information for image processing.
Our model can also be used to create new image processing methodologies, refine existing image processing methods, or act as a powerful image filter.
Image processing by computer can play an important motivational role in middle-school mathematics.
Proceedings ArticleDOI
Zhu Youlian, Huang Cheng 
01 Jan 2011
20 Citations
It has a good application prospect in image processing.
Image processing allows a much wider range of algorithms to be applied to the input data and can avoid problems such as the build-up of noise and signal distortion during processing of images.
Proceedings ArticleDOI
14 Mar 1988
36 Citations
The authors have developed an expert system that can automatically construct image-processing algorithms by combining elemental processing modules included in an image-processing software package.
Therefore, digital image processing is presented as a fruitful field for automation.
This allows developing a new image processing method.
Open accessProceedings ArticleDOI
Alaa Sheta, Malik Braik, Sultan Aljahdali 
10 May 2012
27 Citations
Accordingly, the GAs based image segmentation method will definitely help in solving various complex image processing tasks.
To complete this task image processing technique can be more useful.
Book ChapterDOI
Raghuveer M. Rao, Manoj K. Arora 
01 Jan 2004
33 Citations
At higher levels, processing can take on the form of automatically detecting objects in the image and classifying them.
The chapter demonstrates that image algebra can serve as a good model for parallel image processing.
On this basis, new image processing techniques could be devised.
We also show that image algebra can be used not only in the field of image processing but in other areas related to artificial perception systems.
More complex image processing can be performed using these two basic operations.
These methodologies can be easily expanded to many other image processing approaches.
Here we show that they can also be used as a general method for low-level image processing.

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