Title :
Cellular multiadaptive analogic architecture: a computational framework for UAV applications
Author :
Rekeczky, Csaba ; Szatmári, István ; Bálya, Dávid ; Tímár, Gergely ; Zarándy, Ákos
Author_Institution :
Analogical & Neural Comput. Lab., Hungarian Acad. of Sci., Budapest, Hungary
fDate :
5/1/2004 12:00:00 AM
Abstract :
An efficient adaptive algorithm in real-time applications should make optimal use of the available computing power for reaching some specific design goals. Relying on appropriate strategies, the spatial resolution/temporal rate can be traded against computational complexity; and sensitivity traded against robustness, in an adaptive process. In this paper, we present an algorithmic framework where a spatial multigrid computing is placed within a temporal multirate structure, and at each spatial grid point, the computation is based on an adaptive multiscale approach. The algorithms utilize an analogic (analog and logic) architecture consisting of a high-resolution optical sensor, a low-resolution cellular sensor-processor and a digital signal processor. The proposed framework makes the acquisition of a spatio-temporally consistent image flow possible even in case of extreme variations (relative motion) in the environment. It ideally supports the handling of various difficult problems on a moving platform including terrain identification, navigation parameter estimation, and multitarget tracking. The proposed spatio-temporal adaptation relies on a feature-based optical-flow estimation that can be efficiently calculated on available cellular nonlinear network (CNN) chips. The quality of the adaptation is evaluated compared to nonadaptive spatio-temporal behavior where the input flow is oversampled, thus resulting in redundant data processing with an unnecessary waste of computing power. We also use a visual navigation example recovering the yaw-pitch-roll parameters from motion-field estimates in order to analyze the adaptive hierarchical algorithmic framework proposed and highlight the application potentials in the area of unmanned air vehicles.
Keywords :
adaptive systems; computational complexity; digital signal processing chips; neural nets; optical sensors; real-time systems; adaptive algorithm; adaptive computing; analogic architecture; analogic cellular neural network; cellular nonlinear network chips; cellular sensor-processor; computational complexity; computing power; digital signal processor; multitarget tracking; navigation parameter estimation; optical sensor; optical-flow estimation; spatial multigrid computing; spatial resolution; spatio-temporal adaptation; terrain identification; vision system; Adaptive algorithm; Algorithm design and analysis; Computer architecture; Grid computing; Navigation; Optical sensors; Parameter estimation; Signal processing algorithms; Spatial resolution; Unmanned aerial vehicles; Adaptive computing; CNN; UAV; analogic cellular neural network; cellular computing; vision system;
Journal_Title :
Circuits and Systems I: Regular Papers, IEEE Transactions on
DOI :
10.1109/TCSI.2004.827629