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36                                     Autonomous Mobile Robots

                                features used for reference pass out of the FOV: in recursive mode, there is no
                                guarantee at initiation that features will persist. Errors (drift) are introduced
                                when the reference features are changed and the consequence is that a robot
                                will have difficulty in returning home or knowing that it is revisiting a location.
                                Chiuso has a scheme to reduce this problem but drift is still inevitable. On the
                                other hand, SLAM has to rely on sparse data because it needs to maintain a full
                                covariance matrix which will soon become computationally expensive if the
                                number of data points is not restricted. It can be difficult to associate outdoor
                                data when it is sparse.
                                   The two techniques offer different benefits and a possible complementary
                                role. SLAM is able to maintain a sparse map on a large scale for navigation but
                                locally does not help much with terrain classification. SFM is useful for building
                                a dense model of the immediate surroundings, useful for obstacle avoidance,
                                path planning, and situation awareness. The availability of a 3D model (with
                                texture and color) created by SFM will be beneficial for validation of the sens-
                                ory data used in a SLAM framework: for example, associating an object type
                                with range data; providing color (hue) as an additional state; and so on.



                                1.5 CONCLUSION
                                We have presented the essentials of a practical VGS and provided details on
                                its sensors and capabilities such as road following, obstacle detection, and
                                sensor fusion. Worldwide, there have been many impressive demonstrations of
                                visual guidance and certain technologies are so mature that they are available
                                commercially.
                                   This chapter started with a road map for UGVs and we have shown that the
                                research community is still struggling to achieve A-to-B mobility in tasks within
                                large-scale environments. This is because navigating through open terrain is a
                                highly complex problem with many unknowns. Information from the immediate
                                surroundings is required to determine traversable surfaces among the many
                                potential hazards. Vision has a role in the creation of terrain maps but we have
                                shown that practically this is still difficult due to the physical limitations of
                                available sensor technology. We anticipate technological advances that will
                                enable the acquisition of high-resolution 3D data at fast frame rates.
                                   Acquiring large amounts of data is not a complete solution. We argue that
                                we do not make proper use of the information already available in 2D images,
                                and that there is potential for exploiting algorithms such as SFM and vision-
                                based SLAM. Another problem is finding alternative ways of representing the
                                environment that are more natural for navigation; or how to extract knowledge
                                from images and use this (state) information within algorithms.
                                   We have made efforts to highlight problems and limitations. The task is
                                complex and practical understanding is essential. The only way to make real




                                 © 2006 by Taylor & Francis Group, LLC



                                 FRANKL: “dk6033_c001” — 2006/3/31 — 16:42 — page 36 — #36
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