Abstract :
In this paper, we face the problem of constructing a robust feature space for automatic classification of signals from narrow-band in-air ultrasonic sensors. In consideration of the existing sensor bandwidth restrictions, the importance of selecting a suitable signal descriptor is highlighted. We assume that the characteristics of the ultrasonic sources which produce the signals are impressed in the shape of their echo envelopes. A technique based on orthonormal Laguerre polynomials is applied to the echo envelopes for constructing the feature space. Different methods for computing the Laguerre coefficients are discussed, and the properties of the resulting feature space are investigated. For the experimental verification of the method, a set of acoustic sources is synthesized by submitting a high-frequency piezoelectric transducer to varying levels of electrical damping. How some factors, i.e., the signal-to-noise ratio of the return signals, and the sampling rate to digitize them, affect the achievable recognition rate is discussed. High recognition rates are obtained in our experiments, in spite of the fact that, by visual inspection, the shapes of the signals from the synthesized sources are very similar to one another
Keywords :
Hilbert transforms; Laplace transforms; acoustic convolution; analogue-digital conversion; computational complexity; covariance matrices; demodulation; least squares approximations; pattern classification; polynomial matrices; robot vision; signal classification; signal sampling; sonar detection; sonar signal processing; ADC; Hilbert transform; Laplace transforms; TOF estimation; automatic classification; class clustering; computational complexity; convolution; covariance; demodulation; digital-signal-processing technique; echo envelopes; electrical damping; envelope extraction; high-frequency piezoelectric transducer; intelligent sensors; interpolation; narrow-band in-air ultrasonic sensors; nonlinear least squares; orthonormal Laguerre polynomials; return signal SNR; robotic eyes; robust feature space; sampling rate; sensor bandwidth restrictions; signal classification; signal descriptor; sonar sensing; ultrasonic signal modeling; Bandwidth; Damping; Narrowband; Piezoelectric transducers; Polynomials; Robustness; Sensor phenomena and characterization; Shape; Signal synthesis; Signal to noise ratio;