In this paper we propose a specialized hardware architecture for the real time visual navigation of a mobile Robot. The adopted navigation method is based on a two-steps approach. Features are extracted and matched over an image sequence which is captured by a video-camera (mounted on a mobile robot) during its motion. As a resul, a 2D motion field is recovered and used to extract ego-motion parameters. Our hardware implements the first step of the method, which consists of features extraction and raw match computation by means of radiometric similarity computation. Real time performances are allowed since a 40 MHz processing rate is achieved.

Specialized Hardware for Real-Time Navigation

Stella E;Veneziani N;Distante A
2001

Abstract

In this paper we propose a specialized hardware architecture for the real time visual navigation of a mobile Robot. The adopted navigation method is based on a two-steps approach. Features are extracted and matched over an image sequence which is captured by a video-camera (mounted on a mobile robot) during its motion. As a resul, a 2D motion field is recovered and used to extract ego-motion parameters. Our hardware implements the first step of the method, which consists of features extraction and raw match computation by means of radiometric similarity computation. Real time performances are allowed since a 40 MHz processing rate is achieved.
2001
Istituto di Studi sui Sistemi Intelligenti per l'Automazione - ISSIA - Sede Bari
Optical Flow
Residue Number Sys.
LUT Computation
Data Flow Arch.
Real-time Hardware
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/23635
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