1,106 research outputs found

    Moving Target Tracking of Omnidirectional Robot with Stereo Cameras

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    Long-term experiments with an adaptive spherical view representation for navigation in changing environments

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    Real-world environments such as houses and offices change over time, meaning that a mobile robot’s map will become out of date. In this work, we introduce a method to update the reference views in a hybrid metric-topological map so that a mobile robot can continue to localize itself in a changing environment. The updating mechanism, based on the multi-store model of human memory, incorporates a spherical metric representation of the observed visual features for each node in the map, which enables the robot to estimate its heading and navigate using multi-view geometry, as well as representing the local 3D geometry of the environment. A series of experiments demonstrate the persistence performance of the proposed system in real changing environments, including analysis of the long-term stability

    Aerial-Ground collaborative sensing: Third-Person view for teleoperation

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    Rapid deployment and operation are key requirements in time critical application, such as Search and Rescue (SaR). Efficiently teleoperated ground robots can support first-responders in such situations. However, first-person view teleoperation is sub-optimal in difficult terrains, while a third-person perspective can drastically increase teleoperation performance. Here, we propose a Micro Aerial Vehicle (MAV)-based system that can autonomously provide third-person perspective to ground robots. While our approach is based on local visual servoing, it further leverages the global localization of several ground robots to seamlessly transfer between these ground robots in GPS-denied environments. Therewith one MAV can support multiple ground robots on a demand basis. Furthermore, our system enables different visual detection regimes, and enhanced operability, and return-home functionality. We evaluate our system in real-world SaR scenarios.Comment: Accepted for publication in 2018 IEEE International Symposium on Safety, Security and Rescue Robotics (SSRR

    Methods for Reliable Robot Vision with a Dioptric System

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    Design and modeling of a stair climber smart mobile robot (MSRox)

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    Obstacle Avoidance Based on Stereo Vision Navigation System for Omni-directional Robot

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    This paper addresses the problem of obstacle avoidance in mobile robot navigation systems. The navigation system is considered very important because the robot must be able to be controlled from its initial position to its destination without experiencing a collision. The robot must be able to avoid obstacles and arrive at its destination. Several previous studies have focused more on predetermined stationary obstacles. This has resulted in research results being difficult to apply in real environmental conditions, whereas in real conditions, obstacles can be stationary or moving caused by changes in the walking environment. The objective of this study is to address the robot’s navigation behaviors to avoid obstacles. In dealing with complex problems as previously described, a control system is designed using Neuro-Fuzzy so that the robot can avoid obstacles when the robot moves toward the destination. This paper uses ANFIS for obstacle avoidance control. The learning model used is offline learning. Mapping the input and output data is used in the initial step. Then the data is trained to produce a very small error. To support the movement of the robot so that it is more flexible and smoother in avoiding obstacles and can identify objects in real-time, a three wheels omnidirectional robot is used equipped with a stereo vision sensor. The contribution is to advance state of the art in obstacle avoidance for robot navigation systems by exploiting ANFIS with target-and-obstacles detection based on stereo vision sensors. This study tested the proposed control method by using 15 experiments with different obstacle setup positions. These scenarios were chosen to test the ability to avoid moving obstacles that may come from the front, the right, or the left of the robot. The robot moved to the left or right of the obstacles depending on the given Vy speed. After several tests with different obstacle positions, the robot managed to avoid the obstacle when the obstacle distance ranged from 173 – 150 cm with an average speed of Vy 274 mm/s. In the process of avoiding obstacles, the robot still calculates the direction in which the robot is facing the target until the target angle is 0

    A vision-guided parallel parking system for a mobile robot using approximate policy iteration

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    Reinforcement Learning (RL) methods enable autonomous robots to learn skills from scratch by interacting with the environment. However, reinforcement learning can be very time consuming. This paper focuses on accelerating the reinforcement learning process on a mobile robot in an unknown environment. The presented algorithm is based on approximate policy iteration with a continuous state space and a fixed number of actions. The action-value function is represented by a weighted combination of basis functions. Furthermore, a complexity analysis is provided to show that the implemented approach is guaranteed to converge on an optimal policy with less computational time. A parallel parking task is selected for testing purposes. In the experiments, the efficiency of the proposed approach is demonstrated and analyzed through a set of simulated and real robot experiments, with comparison drawn from two well known algorithms (Dyna-Q and Q-learning)

    Autonomous Pathfinding for Planetary Rover by Implementing A* Algorithm on an Aerial Map Processed Using MATLAB Image Processing Tool

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    Human curiosity to discover new things and exploring unknown regions, have continually to development of robots, which became a powerful tools for accessing dangerous environments or exploring regions too distant for human. Previous robot technology functioned under continues human supervision, limiting the robot to confined area and pre-programmed task. However,as exploration moved to regions where communication is ineffective or unviable, robots were used to carry out complex tasks without human supervision. To empower such capacities, robots are being upgraded by advances extending from new sensor improvement to automated mission planning software, circulated automated control, and more proficient power systems. With the advancement of autonomy science robotics technology developed and the robots became more and more capable of operating multi task, under minimal human supervision. In this project work we aim at designing an ONS (Offline Navigation System) system for the planetary rover which will use aerial map taken from satellite and pre-process into a grid map which is then will be used by the rover to travel from one place to another place and completing its mission. The aerial map is processed using Matlab image processing tool to convert into a grid map and search for shortest route is implemented using A* algorithm. The shortest route result is then converted into microcontroller signal to move the rover. With this system the rovers will have the ability to predict the best possible path even if the communication to the satellite is broken

    Mobile robot navigation in dynamic environments using omnidirectional stereo

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