Abstract

We consider the problem of automatic object recognition by small, light-weight, low power, hardware systems. We abstract from biological function and organization and propose hardware architectures and a design methodology to engineer such hardware. Robust, miniature, and energetically efficient VLSI systems for AOR can ultimately be achieved by following a path which optimizes the design at and between all levels of system integration, i.e., from devices and circuit techniques all the way to algorithms and architectural level considerations. By way of example, we discuss two experimental systems for image acquisition and preprocessing fabricated in standard CMOS processes. The first one is a large scale analog system, a contrast sensitive silicon retina, with over 590, 000 transistors operating in subthreshold CMOS. The second system is a mixed analog-digital system for image acquisition and tracking compensation that incorporates a contrast sensitive silicon retina in the image sensing area.

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