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Dive into the research topics where Timothy Patten is active.

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Featured researches published by Timothy Patten.


PLOS ONE | 2012

Human Cortical Traveling Waves: Dynamical Properties and Correlations with Responses

Timothy Patten; Christopher J. Rennie; P. A. Robinson; Pulin Gong

The spatiotemporal behavior of human EEG oscillations is investigated. Traveling waves in the alpha and theta ranges are found to be common in both prestimulus and poststimulus EEG activity. The dynamical properties of these waves, including their speeds, directions, and durations, are systematically characterized for the first time, and the results show that there are significant changes of prestimulus spontaneous waves in the presence of an external stimulus. Furthermore, the functional relevance of these waves is examined by studying how they are correlated with reaction times on a single trial basis; prestimulus alpha waves traveling in the frontal-to-occipital direction are found to be most correlated to reaction speeds. These findings suggest that propagating waves of brain oscillations might be involved in mediating long-range interactions between widely distributed parts of human cortex.


Journal of Field Robotics | 2016

Vision-based Obstacle Detection and Navigation for an Agricultural Robot

David Ball; Ben Upcroft; Gordon Wyeth; Peter Corke; Andrew English; Patrick Ross; Timothy Patten; Robert Fitch; Salah Sukkarieh; Andrew Bate

This paper describes a vision-based obstacle detection and navigation system for use as part of a robotic solution for the sustainable intensification of broad-acre agriculture. To be cost-effective, the robotics solution must be competitive with current human-driven farm machinery. Significant costs are in high-end localization and obstacle detection sensors. Our system demonstrates a combination of an inexpensive global positioning system and inertial navigation system with vision for localization and a single stereo vision system for obstacle detection. The paper describes the design of the robot, including detailed descriptions of three key parts of the system: novelty-based obstacle detection, visually-aided guidance, and a navigation system that generates collision-free kinematically feasible paths. The robot has seen extensive testing over numerous weeks of field trials during the day and night. The results in this paper pertain to one particular 3 h nighttime experiment in which the robot performed a coverage task and avoided obstacles. Additional results during the day demonstrate that the robot is able to continue operating during 5 min GPS outages by visually following crop rows.


Science & Engineering Faculty | 2015

Robotics for sustainable broad-acre agriculture

David Ball; Patrick Ross; Andrew English; Timothy Patten; Ben Upcroft; Robert Fitch; Salah Sukkarieh; Gordon Wyeth; Peter Corke

This paper describes the development of small low-cost cooperative robots for sustainable broad-acre agriculture to increase broad-acre crop production and reduce environmental impact. The current focus of the project is to use robotics to deal with resistant weeds, a critical problem for Australian farmers. To keep the overall system affordable our robot uses low-cost cameras and positioning sensors to perform a large scale coverage task while also avoiding obstacles. A multi-robot coordinator assigns parts of a given field to individual robots. The paper describes the modification of an electric vehicle for autonomy and experimental results from one real robot and twelve simulated robots working in coordination for approximately two hours on a 55 hectare field in Emerald Australia. Over this time the real robot ‘sprayed’ 6 hectares missing 2.6% and overlapping 9.7% within its assigned field partition, and successfully avoided three obstacles.


Autonomous Robots | 2018

Monte Carlo planning for active object classification

Timothy Patten; Wolfram Martens; Robert Fitch

Classifying objects in complex unknown environments is a challenging problem in robotics and is fundamental in many applications. Modern sensors and sophisticated perception algorithms extract rich 3D textured information, but are limited to the data that are collected from a given location or path. We are interested in closing the loop around perception and planning, in particular to plan paths for better perceptual data, and focus on the problem of planning scanning sequences to improve object classification from range data. We formulate a novel time-constrained active classification problem and propose solution algorithms that employ a variation of Monte Carlo tree search to plan non-myopically. Our algorithms use a particle filter combined with Gaussian process regression to estimate joint distributions of object class and pose. This estimator is used in planning to generate a probabilistic belief about the state of objects in a scene, and also to generate beliefs for predicted sensor observations from future viewpoints. These predictions consider occlusions arising from predicted object positions and shapes. We evaluate our algorithms in simulation, in comparison to passive and greedy strategies. We also describe similar experiments where the algorithms are implemented online, using a mobile ground robot in a farm environment. Results indicate that our non-myopic approach outperforms both passive and myopic strategies, and clearly show the benefit of active perception for outdoor object classification.


The International Journal of Robotics Research | 2018

Dec-MCTS: Decentralized planning for multi-robot active perception

Graeme Best; Oliver M. Cliff; Timothy Patten; Ramgopal R. Mettu; Robert Fitch

We propose a decentralized variant of Monte Carlo tree search (MCTS) that is suitable for a variety of tasks in multi-robot active perception. Our algorithm allows each robot to optimize its own actions by maintaining a probability distribution over plans in the joint-action space. Robots periodically communicate a compressed form of their search trees, which are used to update the joint distribution using a distributed optimization approach inspired by variational methods. Our method admits any objective function defined over robot action sequences, assumes intermittent communication, is anytime, and is suitable for online replanning. Our algorithm features a new MCTS tree expansion policy that is designed for our planning scenario. We extend the theoretical analysis of standard MCTS to provide guarantees for convergence rates to the optimal payoff sequence. We evaluate the performance of our method for generalized team orienteering and online active object recognition using real data, and show that it compares favorably to centralized MCTS even with severely degraded communication. These examples demonstrate the suitability of our algorithm for real-world active perception with multiple robots.


international conference on robotics and automation | 2016

Viewpoint Evaluation for Online 3-D Active Object Classification

Timothy Patten; Michael Zillich; Robert Fitch; Markus Vincze; Salah Sukkarieh


Archive | 2016

Decentralised Monte Carlo Tree Search for Active Perception

Graeme Best; Oliver M. Cliff; Timothy Patten; Ramgopal R. Mettu; Robert Fitch


Archive | 2015

User interface and coverage planner for agricultural robotics

David Richards; Timothy Patten; Robert Fitch; David Ball; Salah Sukkarieh


Archive | 2013

Large-Scale Near-Optimal Decentralised Information Gathering with Multiple Mobile Robots

Timothy Patten; Robert Fitch; Salah Sukkarieh


Acta Horticulturae | 2016

Multi-Robot Coverage Planning with Resource Constraints for Horticulture Applications

Timothy Patten; Robert Fitch; Salah Sukkarieh

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David Ball

Peter MacCallum Cancer Centre

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Andrew English

Queensland University of Technology

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Ben Upcroft

Queensland University of Technology

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Gordon Wyeth

Queensland University of Technology

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Patrick Ross

Queensland University of Technology

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Peter Corke

Queensland University of Technology

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