Fabio Roli, Franco Fontana, Paolo Pellegretti, Carlo Dambra
Optical Engineering, Vol. 32, Issue 06, (June 1993) https://doi.org/10.1117/12.134176
TOPICS: Image processing, Image segmentation, Image filtering, Detection and tracking algorithms, Image quality, Image processing algorithms and systems, Magnetic resonance imaging, Sensors, Control systems, Computed tomography
An approach to the control of multisensor image processing and recognition based on a suitable representation of control knowledge in symbolic form is presented. A hierarchical organization of control knowledge, corresponding to a decomposition of the image recognition process into subprocesses, is proposed. The knowledge for the control of the low-level and high-level phases is described in detail. The control problem involved in the automatic selection and tuning of image processing algorithms is addressed using data structures representing advised sequences of algorithms, a symbolic representation of quality control, and control strategies with backtracking capabilities. Error handling in the high-level phase is faced by a functional decomposition of the error-handling task into error states and types and by a hierarchical representation of the control knowledge for error detection and recovery. Results obtained in a real-world multisensor application are reported, and the improvement in classification accuracy obtained by the proposed error-handling mechanisms is evaluated.