On Derivative Sampling From Image Blur for Reconstruction of Band-Limited Signals

Abstract: 

Image sensors are typically characterized by slow sampling rates, which limit their efficacy in signal reconstruc-tion applications. Their integrative nature though produces image blur when the exposure window is long enough to capture relative motion of the observed object relative to the sensor. Image blur contains more information on the observed dynam-ics than the typically used centroids, i.e., time averages of the motion within the exposure window. Parameters characterizing the observed motion, such as the signal derivatives at specified sampling instants, can be used for signal reconstruction through the derivative sampling extension of the known sampling theorem. Using slow image based sensors as derivative samplers allows for reconstruction of faster signals, overcoming Nyquist limitations. In this manuscript, we present an algorithm to extract values of a signal and its derivatives from blurred image measurements at specified sampling instants, i.e. the center of the exposure windows, show its application in two signal reconstruction numerical examples and provide a numerical study on the sensitivity of the extracted values to significant problem parameters.

Reference:
J. Tani, S. Mishra and J.T. Wen (2014). On Derivative Sampling From Image Blur for Reconstruction of Band-Limited Signals.

ASME 2014 Dynamic Systems and Control Conference, San Antonio, Oct 2014.

Publication Type: 
Conference Articles