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[NORMAL] Detection of architectural distortion using multilayer back propagation neural network

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Figure

Figure 1: The process of detection of AD sites
Figure 2: Obtaining Fine-tuned ROIs
Figure 3: The image on the right shows a possible orientation field for the image on the left  Each segment of line corresponds to a respective pixel in the original image
Figure 6 shows the finally classified ROIs that are most possible Architectural distortion

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