Title :
Discrimination of Tooth Layers and Dental Restorative Materials Using Cutting Sounds
Author :
Zakeri, Vahid ; Arzanpour, Siamak ; Chehroudi, Babak
Author_Institution :
Sch. of Mechatron. Syst. Eng., Simon Fraser Univ., Surrey, BC, Canada
Abstract :
Dental restoration begins with removing carries and affected tissues with air-turbine rotary cutting handpieces, and later restoring the lost tissues with appropriate restorative materials to retain the functionality. Most restoration materials eventually fail as they age and need to be replaced. One of the difficulties in replacing failing restorations is discerning the boundary of restorative materials, which causes inadvertent removal of healthy tooth layers. Developing an objective and sensor-based method is a promising approach to monitor dental restorative operations and to prevent excessive tooth losses. This paper has analyzed cutting sounds of an air-turbine handpiece to discriminate between tooth layers and two commonly used restorative materials, amalgam and composite. Support vector machines were employed for classification, and the averaged short-time Fourier transform coefficients were selected as the features. The classifier performance was evaluated from different aspects such as the number of features, feature scaling methods, classification schemes, and utilized kernels. The total classification accuracies were 89% and 92% for cases included composite and amalgam materials, respectively. The obtained results indicated the feasibility and effectiveness of the proposed method.
Keywords :
Fourier transforms; biomedical materials; biomedical measurement; composite materials; cutting; dentistry; medical signal processing; patient treatment; signal classification; support vector machines; affected tissue removal; air-turbine rotary cutting handpieces; amalgam materials; averaged short-time Fourier transform coefficients; carries removal; classification schemes; classifier performance; composite materials; cutting sounds; dental restoration; dental restorative materials; dental restorative operations; excessive tooth losses; feature scaling methods; objective method; restorative material boundary; sensor-based method; support vector machines; tooth layers; total classification accuracy; utilized kernels; Accuracy; Dentistry; Kernel; Materials; Monitoring; Support vector machines; Teeth; Audio monitoring; audio signal processing; dental restoration; support vector machine (SVM);
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
DOI :
10.1109/JBHI.2014.2317503