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A review of algorithms and techniques for image-based recognition and inference in mobile robotic systems

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dc.contributor.author Tawiah T.A.-Q.
dc.date.accessioned 2022-10-31T15:05:23Z
dc.date.available 2022-10-31T15:05:23Z
dc.date.issued 2020
dc.identifier.issn 17298806
dc.identifier.other 10.1177/1729881420972278
dc.identifier.uri http://41.74.91.244:8080/handle/123456789/400
dc.description Tawiah, T.A.-Q., ICT Education Department, University of Education Winneba, Winneba, Ghana en_US
dc.description.abstract Autonomous vehicles include driverless, self-driving and robotic cars, and other platforms capable of sensing and interacting with its environment and navigating without human help. On the other hand, semiautonomous vehicles achieve partial realization of autonomy with human intervention, for example, in driver-assisted vehicles. Autonomous vehicles first interact with their surrounding using mounted sensors. Typically, visual sensors are used to acquire images, and computer vision techniques, signal processing, machine learning, and other techniques are applied to acquire, process, and extract information. The control subsystem interprets sensory information to identify appropriate navigation path to its destination and action plan to carry out tasks. Feedbacks are also elicited from the environment to improve upon its behavior. To increase sensing accuracy, autonomous vehicles are equipped with many sensors [light detection and ranging (LiDARs), infrared, sonar, inertial measurement units, etc.], as well as communication subsystem. Autonomous vehicles face several challenges such as unknown environments, blind spots (unseen views), non-line-of-sight scenarios, poor performance of sensors due to weather conditions, sensor errors, false alarms, limited energy, limited computational resources, algorithmic complexity, human�machine communications, size, and weight constraints. To tackle these problems, several algorithmic approaches have been implemented covering design of sensors, processing, control, and navigation. The review seeks to provide up-to-date information on the requirements, algorithms, and main challenges in the use of machine vision�based techniques for navigation and control in autonomous vehicles. An application using land-based vehicle as an Internet of Thing-enabled platform for pedestrian detection and tracking is also presented. � The Author(s) 2020. en_US
dc.publisher SAGE Publications Inc. en_US
dc.subject AI in robotics en_US
dc.subject Autonomous vehicles en_US
dc.subject computer vision en_US
dc.subject field robotics en_US
dc.subject mobile robots and multi-robot systems en_US
dc.subject motion and tracking en_US
dc.subject object recognition and classification en_US
dc.subject robot learning and ontogeny en_US
dc.subject robot vision en_US
dc.subject scene analysis and understanding en_US
dc.subject vision systems en_US
dc.subject vision-based navigation and SLAM en_US
dc.title A review of algorithms and techniques for image-based recognition and inference in mobile robotic systems en_US
dc.type Article en_US


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