Vision-based Vehicle Guidance

Vision-based Vehicle Guidance
Author: Ichiro Masaki
Publisher: Springer Science & Business Media
Total Pages: 355
Release: 2012-12-06
Genre: Computers
ISBN: 146122778X

There is a growing social interest in developing vision-based vehicle guidance systems for improving traffic safety and efficiency and the environment. Ex amples of vision-based vehicle guidance systems include collision warning systems, steering control systems for tracking painted lane marks, and speed control systems for preventing rear-end collisions. Like other guidance systems for aircraft and trains, these systems are ex pected to increase traffic safety significantly. For example, safety improve ments of aircraft landing processes after the introduction of automatic guidance systems have been reported to be 100 times better than prior to installment. Although the safety of human lives is beyond price, the cost for automatic guidance could be compensated by decreased insurance costs. It is becoming more important to increase traffic safety by decreasing the human driver's load in our society, especially with an increasing population of senior people who continue to drive. The second potential social benefit is the improvement of traffic efficiency by decreasing the spacing between vehicles without sacrificing safety. It is reported, for example, that four times the efficiency is expected if the spacing between cars is controlled automatically at 90 cm with a speed of 100 kmjh compared to today's typical manual driving. Although there are a lot of tech nical, psychological, and social issues to be solved before realizing the high density jhigh-speed traffic systems described here, highly efficient highways are becoming more important because of increasing traffic congestion.

Multiresolution Image Shape Description

Multiresolution Image Shape Description
Author: John M. Gauch
Publisher: Springer Science & Business Media
Total Pages: 130
Release: 2012-12-06
Genre: Computers
ISBN: 1461228328

Much of our understanding of the relationships among geometric struc tures in images is based on the shape of these structures and their relative orientations, positions and sizes. Thus, developing quantitative methods for capturing shape information from digital images is an important area for computer vision research. This book describes the theory, implemen tation, and application of two multi resolution image shape description methods. The author begins by motivating the need for quantitative methods for describing both the spatial and intensity variations of struc tures in grey-scale images. Two new methods which capture this informa tion are then developed. The first, the intensity axis of symmetry, is a collection of branching and bending surfaces which correspond to the skeleton of the image. The second method, multiresolution vertex curves, focuses on surface curvature properties as the image is blurred by a sequence of Gaussian filters. Implementation techniques for these image shape descriptions are described in detail. Surface functionals are mini mized subject to symmetry constraints to obtain the intensity axis of symmetry. Robust numerical methods are developed for calculating and following vertex curves through scale space. Finally, the author demon strates how grey-scale images can be segmented into geometrically coher ent regions using these shape description techniques. Building quantita tive analysis applications in terms of these visually sensible image regions promises to be an exciting area of biomedical computer vision research. v Acknowledgments This book is a corrected and revised version of the author's Ph. D.

Machine Vision Algorithms and Applications

Machine Vision Algorithms and Applications
Author: Carsten Steger
Publisher: John Wiley & Sons
Total Pages: 280
Release: 2017-11-07
Genre: Science
ISBN: 3527812903

The second edition of this successful machine vision textbook is completely updated, revised and expanded by 35% to reflect the developments of recent years in the fields of image acquisition, machine vision algorithms and applications. The new content includes, but is not limited to, a discussion of new camera and image acquisition interfaces, 3D sensors and technologies, 3D reconstruction, 3D object recognition and state-of-the-art classification algorithms. The authors retain their balanced approach with sufficient coverage of the theory and a strong focus on applications. All examples are based on the latest version of the machine vision software HALCON 13.

Guidance of Unmanned Aerial Vehicles

Guidance of Unmanned Aerial Vehicles
Author: Rafael Yanushevsky
Publisher: CRC Press
Total Pages: 373
Release: 2011-03-29
Genre: Technology & Engineering
ISBN: 1439850968

Written by an expert with more than 30 years of experience, Guidance of Unmanned Aerial Vehicles contains new analytical results, taken from the author's research, which can be used for analysis and design of unmanned aerial vehicles guidance and control systems. This book progresses from a clear elucidation of guidance laws and unmanned aerial veh

Automatic Vehicle Guidance

Automatic Vehicle Guidance
Author: Massimmo Bertozzi
Publisher: World Scientific
Total Pages: 258
Release: 1999-04-19
Genre: Computers
ISBN: 9814495387

This book surveys the history of automatic vehicle guidance based on the processing of visual information, starting from the very first projects worldwide up to the latest developments. It also presents the ARGO prototype vehicle, developed at the University of Parma (Italy), and describes its equipment, setup, and performance. ARGO has been equipped with cameras and processing systems to drive autonomously in real traffic conditions. The complete system has been tested on public roads, during a tour in which ARGO drove itself along the Italian highway network for more than 2000 km. A detailed analysis of this trip is also included.

Vision Based, Multi-cue Driver Models for Intelligent Vehicles

Vision Based, Multi-cue Driver Models for Intelligent Vehicles
Author: Sujitha Catherine Martin
Publisher:
Total Pages: 131
Release: 2016
Genre:
ISBN:

This dissertation seeks to enable intelligent vehicles to see, to predict intentions, to understand and to model the state of driver. We developed a state of the art vision based non-contact gaze estimation framework by carefully designing submodules which will build up to achieve continuous and robust estimation. Key modules in this system include, face detection using deep convolutional neural networks, landmark estimation from cascaded regression models, head pose from geometrical correspondence mapping from 2-D points in the image plane to 3-D points in the head model, horizontal gaze surrogate based on geometrical formulation of the eye ball and iris position, vertical gaze surrogate based on openness of the upper eye lids and appearance descriptor, and finally, a 9-class gaze zone estimation from naturalistic driving data driven random forest algorithm. We developed a framework to model driver's gaze behavior by representing the scanpath over a time period using glance durations and transition frequencies. As a use case, we explore the driver's scanpath patterns during maneuvers executed in freeway driving, namely, left lane change maneuver, right lane change maneuver and lane keep. It is shown that condensing temporal scanpath into glance durations and glance transition frequencies leads to recurring patterns based on driver activities. Furthermore, modeling these patterns show predictive powers in maneuver detection up to a few seconds a priori and show a promise for developing gaze guidance during take over requests in highly automated vehicles. We introduce a framework to model the spatio-temporal movements of head, eyes and hands given naturalistic driving data of looking-in at the driver for any events or tasks performed of interest. As a use case, we explore the temporal coordination of the modalities on data of drivers executing maneuvers at stop-controlled intersections; the maneuvers executed are go straight, turn left and turn right. In sequentially increasing time windows, by training classifiers which have the ability to provide discriminative quality of its input variable, the experimental study at intersections shows which type of, when and how long distinguishable preparatory movements occur in the range of a few milliseconds to a few seconds. We introduce one part of the Vision for Intelligent Vehicles and Applications (VIVA) challenge, namely, the VIVA-face challenge. VIVA is a platform designed to share naturalistic driving data with the community in order to: present issues and challenges in vision from real-world driving conditions, benchmark existing vision approaches using proper metrics and progress the development of future vision algorithms. With a special focus on challenges from looking inside at the driver's face, we provide information on how the data is acquired and annotated, and how methods are benchmarked, compared and shared on leaderboards. Finally, we propose de-identification filters for protecting the privacy of drivers while preserving sufficient details to infer driver behavior, such as the gaze direction, in naturalistic driving videos. We implement and compare de-identification filters, which are made up of a combination of preserving eye regions and distorting the background, to show promising results. With such filters, researchers may be more inclined to publicly share deidentified naturalistic driving data. The research community can then tremendously benefit from large amounts of naturalistic driving data and focus on the analysis of human factors in the design and evaluation of intelligent vehicles.

Modern Missile Guidance

Modern Missile Guidance
Author: Rafael Yanushevsky
Publisher: CRC Press
Total Pages: 372
Release: 2018-09-17
Genre: Technology & Engineering
ISBN: 1351202936

Missile Guidance, Second Edition provides a timely survey of missile control and guidance theory, based on extensive work the author has done using the Lyapunov approach. This new edition also presents the Lyapunov-Bellman approach for choosing optimal parameters of the guidance laws, and direct and inverse optimal problems are considered. This material is important for readers working in the areas of optimization and optimal theory. This edition also contains updated coverage of guidance and control system components, since the efficiency of guidance laws depends on their realization. The text concludes with information on the new generation of intercept systems now in development.

Natural Object Recognition

Natural Object Recognition
Author: Thomas M. Strat
Publisher: Springer Science & Business Media
Total Pages: 186
Release: 2012-12-06
Genre: Computers
ISBN: 1461229324

Natural Object Recognition presents a totally new approach to the automation of scene understanding. Rather than attempting to construct highly specialized algorithms for recognizing physical objects, as is customary in modern computer vision research, the application and subsequent evaluation of large numbers of relatively straightforward image processing routines is used to recognize natural features such as trees, bushes, and rocks. The use of contextual information is the key to simplifying the problem to the extent that well understood algorithms give reliable results in ground-level, outdoor scenes.