1 PG Student, 2 Assistant Professor, 3 Professor
& Head, 4 Assistant Professor
Department of Computer Science and engineering, Vickram College Of Engineering, Enathi, Sivagangai, India.
Department of Computer Science and engineering, Vickram College Of Engineering, Enathi, Sivagangai, India.
Dental radiographs are used
for human identification in dental biometrics. The dental radiograph gives us
various information such as tooth contours, relative positions of neighbouring
teeth, and shapes of the dental work (e.g., crowns, fillings, and bridges). The
proposed system has 2 stages namely (1) Feature Extraction and (2) Matching. In
feature extraction, active contour model is used to extract the contour. The
matching stage has 2 steps viz. Computation of Image distances and Subject
identification. In tooth level matching tooth contours are matched using “Shape
registration Method” and depending upon the overlapping areas the dental works
are matched. Then the values of the distance between the tooth contours and
dental works are combined using posterior probabilities. Tooth correspondence
between query radiograph and database radiograph are established. Distance
between the teeth are used to calculate the similarity between the two
radiographs. Finally the distance between the radiographs provide the details
about the subject associated with these radiographs. The dataset contains 10
normal images and 55 OPG images which was collected from Madura Dental
Hospital. The accuracy of the algorithm is measured by the ratio of Correct
Detection images to Total No of images. The experimental results show that this
proposed algorithm is accurate about 72%.