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Published byJoseph Green Modified over 11 years ago
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Application of V-detector in dental diagnosis To be submitted to CEC 2006
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background Malocclusion – diagnosis using X-ray V-detector – one-class classification
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malocclusion Different types: I (normal bite), II (overbite), and III (underbite) Mild or severe (functional)
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Lateral view skull X-ray
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Existing diagnosis method Angles classification: angle ANB (3 in the picture) N A B
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Feature extraction Brightness distribution instead of entity identification Binarization at multiple threshold Quantitatize each binary image with four real numbers
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Remove artificial parts
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Binarization using multiple thresholds
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Choose thresholds & decide reference point T0 = Vmax, T1 = Vmax (Vmax Vmin)/n T,..., T nT1 = Vmax (n T 1)(Vmax Vmin)/n T, Binarized at the highest threshold
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Extract four features at each threshold (a) Horizontal displacement x = xwhite x0, (b) Vertical displacement y = ywhite y0, (c) Displacement distance r = mean of distances between white pixels to (x0, y0) (d) Area mass A = total number of white pixel/width · height
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Experiment results
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Compare with SVM
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Using half of normal data to train
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summary A novel feature extraction is proposed. V-detector shows some potentials. Issue: a lot more normal data are desired.
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