6,264 research outputs found

    RUR53: an Unmanned Ground Vehicle for Navigation, Recognition and Manipulation

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    This paper proposes RUR53: an Unmanned Ground Vehicle able to autonomously navigate through, identify, and reach areas of interest; and there recognize, localize, and manipulate work tools to perform complex manipulation tasks. The proposed contribution includes a modular software architecture where each module solves specific sub-tasks and that can be easily enlarged to satisfy new requirements. Included indoor and outdoor tests demonstrate the capability of the proposed system to autonomously detect a target object (a panel) and precisely dock in front of it while avoiding obstacles. They show it can autonomously recognize and manipulate target work tools (i.e., wrenches and valve stems) to accomplish complex tasks (i.e., use a wrench to rotate a valve stem). A specific case study is described where the proposed modular architecture lets easy switch to a semi-teleoperated mode. The paper exhaustively describes description of both the hardware and software setup of RUR53, its performance when tests at the 2017 Mohamed Bin Zayed International Robotics Challenge, and the lessons we learned when participating at this competition, where we ranked third in the Gran Challenge in collaboration with the Czech Technical University in Prague, the University of Pennsylvania, and the University of Lincoln (UK).Comment: This article has been accepted for publication in Advanced Robotics, published by Taylor & Franci

    A review of computer vision-based approaches for physical rehabilitation and assessment

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    The computer vision community has extensively researched the area of human motion analysis, which primarily focuses on pose estimation, activity recognition, pose or gesture recognition and so on. However for many applications, like monitoring of functional rehabilitation of patients with musculo skeletal or physical impairments, the requirement is to comparatively evaluate human motion. In this survey, we capture important literature on vision-based monitoring and physical rehabilitation that focuses on comparative evaluation of human motion during the past two decades and discuss the state of current research in this area. Unlike other reviews in this area, which are written from a clinical objective, this article presents research in this area from a computer vision application perspective. We propose our own taxonomy of computer vision-based rehabilitation and assessment research which are further divided into sub-categories to capture novelties of each research. The review discusses the challenges of this domain due to the wide ranging human motion abnormalities and difficulty in automatically assessing those abnormalities. Finally, suggestions on the future direction of research are offered

    A quantitative taxonomy of human hand grasps

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    Background: A proper modeling of human grasping and of hand movements is fundamental for robotics, prosthetics, physiology and rehabilitation. The taxonomies of hand grasps that have been proposed in scientific literature so far are based on qualitative analyses of the movements and thus they are usually not quantitatively justified. Methods: This paper presents to the best of our knowledge the first quantitative taxonomy of hand grasps based on biomedical data measurements. The taxonomy is based on electromyography and kinematic data recorded from 40 healthy subjects performing 20 unique hand grasps. For each subject, a set of hierarchical trees are computed for several signal features. Afterwards, the trees are combined, first into modality-specific (i.e. muscular and kinematic) taxonomies of hand grasps and then into a general quantitative taxonomy of hand movements. The modality-specific taxonomies provide similar results despite describing different parameters of hand movements, one being muscular and the other kinematic. Results: The general taxonomy merges the kinematic and muscular description into a comprehensive hierarchical structure. The obtained results clarify what has been proposed in the literature so far and they partially confirm the qualitative parameters used to create previous taxonomies of hand grasps. According to the results, hand movements can be divided into five movement categories defined based on the overall grasp shape, finger positioning and muscular activation. Part of the results appears qualitatively in accordance with previous results describing kinematic hand grasping synergies. Conclusions: The taxonomy of hand grasps proposed in this paper clarifies with quantitative measurements what has been proposed in the field on a qualitative basis, thus having a potential impact on several scientific fields

    Annotated Bibliography: Anticipation

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    A robotic engine assembly pick-place system based on machine learning

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    Industrial revolution brought humans and machines together in building a better future. Where in one hand there is need to replace the repetitive jobs with machines to increase efficiency and volume of production, on the other hand intelligent and autonomous machines have still a long way to go to achieve dexterity of a human. The current scenario requires a system which can utilise best of both the human and the machine. This thesis studies a industrial use case scenario where human-machine combine their skills to build an autonomous pick place system. This study takes a small step towards the human-robot consortium primarily focusing on developing a vision based system for object detection followed by a manipulator pick place operation. This thesis can be divided into two parts : 1. Scene analysis, where a Convolutional Neural Network (CNN) is used for object detection followed by generation of grasping points using object edge image and an algorithm developed during this thesis. 2. Implementation, it focuses on motion generation while taking care of external disturbances to perform successful pick-place operation. In addition human involvement is required which includes teaching trajectory points for the robot to follow. This trajectory is used to generate image data-set for a new object type and thereafter generating new object detection model. The author primarily focuses on building a system framework where the complexities related to robot programming such as generating trajectory points and informing grasping position is not required. The system automatically detects object and performs a pick place operation, resulting in relieving user from robot programming. The system is composed of a depth camera and a manipulator. Camera is the only sensor available for scene analysis and the action is performed using a Franka manipulator. The two components work in request-response mode over ROS. This thesis introduces a newer approaches such as, dividing an workspace image into its constituent object images and performing object detection, creating training data, generating grasp points based on object shape along length of an object. The thesis also presents a case study where three different objects are chosen as test objects. The experiments are a demonstration of the methods applied and efficiency attained. The case study also provides a glimpse of the future research and development areas

    Investigating pre-touch sensing to predict grip success in compliant grippers using machine learning techniques

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    This work explores the application of pre-touch sensing to a compliant gripper in order to navigate the last few centimeters while grasping fruit in an occluded, cluttered environment. Machine learning was used in conjunction with pre-touch sensors to provide qualitative feedback about the success of the gripper in picking the target fruit prior to contact. Three compliant grippers were each designed to pick a specific fruit (miracle berries, cherry tomatoes and small figs) without damaging them. These grippers were designed to be mounted on the hybrid soft-rigid arm of a mobile field robot. An IR reflectance, time of flight and color sensor were used as pre-touch sensors and arranged on the gripper in various combinations to explore the contribution of each sensor. The gripper-sensor system was trained by positioning it relative to a dummy fruit using a 6 DOF arm and gripping the target. Using the training data, five machine learning methods were explored: nearest neighbor, decision trees, support vector machines, multi-layer perceptrons and a naive Bayes classifier. The various sensor configuration-machine learning combinations were tested and evaluated based on their ability to predict grip success. Additional training was conducted to demonstrate the ability to differentiate fruit from foreign matter (e.g. leaves) that are in the gripper opening. Time of flight sensors using nearest neighbor and support vector machines along with the set of all three sensors using support vector machines and multi-layer perceptrons showed the highest prediction precision (= 90%) with the color sensor playing a key role in detecting foreign objects. The machine learning methods were similar in their ability to predict grip success with nearest neighbor showing the best overall results, while sensor ‘richness’ play an important role in differentiating the sensors with the three sensor combination showing the best results
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