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Dive into the research topics where Sascha Kolski is active.

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Featured researches published by Sascha Kolski.


ieee intelligent vehicles symposium | 2008

Detection, prediction, and avoidance of dynamic obstacles in urban environments

Dave Ferguson; Michael Darms; Chris Urmson; Sascha Kolski

We present an approach for robust detection, prediction, and avoidance of dynamic obstacles in urban environments. After detecting a dynamic obstacle, our approach exploits structure in the environment where possible to generate a set of likely hypotheses for the future behavior of the obstacle and efficiently incorporates these hypotheses into the planning process to produce safe actions. The techniques presented are very general and can be used with a wide range of sensors and planning algorithms. We present results from an implementation on an autonomous passenger vehicle that has traveled thousands of miles in populated urban environments and won first place in the DARPA Urban Challenge.


Journal of The Brazilian Society of Mechanical Sciences and Engineering | 2009

2D laser-based probabilistic motion tracking in urban-like environments

Marcelo Becker; Richard Hall; Sascha Kolski; Kristijan Maček; Roland Siegwart; Björn Jensen

All over the world traffic injuries and fatality rates are increasing every year. The combination of negligent and imprudent drivers, adverse road and weather conditions produces tragic results with dramatic loss of life. In this scenario, the use of mobile robotics technology onboard vehicles could reduce casualties. Obstacle motion tracking is an essential ability for car-like mobile robots. However, this task is not trivial in urban environments where a great quantity and variety of obstacles may induce the vehicle to take erroneous decisions. Unfortunately, obstacles close to its sensors frequently cause blind zones behind them where other obstacles could be hidden. In this situation, the robot may lose vital information about these obstructed obstacles that can provoke collisions. In order to overcome this problem, an obstacle motion tracking module based only on 2D laser scan data was developed. Its main parts consist of obstacle detection, obstacle classification, and obstacle tracking algorithms. A motion detection module using scan matching was developed aiming to improve the data quality for navigation purposes; a probabilistic grid representation of the environment was also implemented. The research was initially conducted using a MatLab simulator that reproduces a simple 2D urban-like environment. Then the algorithms were validated using data samplings in real urban environments. On average, the results proved the usefulness of considering obstacle paths and velocities while navigating at reasonable computational costs. This, undoubtedly, will allow future controllers to obtain a better performance in highly dynamic environments.


intelligent robots and systems | 2006

SMART Navigation in Structured and Unstructured Environments

Sascha Kolski; Kristijan Maček; Dave Ferguson; Roland Siegwart

Recently, intelligent transportation systems have been introduced for tasks like automated parking and highway driving. This is one of many contact points between human and robot intelligence, in that a human driver is sharing the driving task with intelligent computer systems. In this video we present an automated passenger vehicle that is able to autonomously navigate through both structured and unstructured B23environments without relying on prior environmental information or known waypoints. The system uses ego motion estimation based on an inertial measurement unit and internal vehicle sensors, and combines this with a laser range finder to map its environment. It uses a combination of global planning and local planning to safely navigate through the environment to a desired goal location.


Journal of Field Robotics | 2008

Autonomous driving in urban environments: Boss and the Urban Challenge

Chris Urmson; Joshua Anhalt; Drew Bagnell; Christopher R. Baker; Robert Bittner; M. N. Clark; John M. Dolan; Dave Duggins; Tugrul Galatali; Christopher Geyer; Michele Gittleman; Sam Harbaugh; Martial Hebert; Thomas M. Howard; Sascha Kolski; Alonzo Kelly; Maxim Likhachev; Matthew McNaughton; Nicholas Miller; Kevin M. Peterson; Brian Pilnick; Raj Rajkumar; Paul E. Rybski; Bryan Salesky; Young-Woo Seo; Sanjiv Singh; Jarrod M. Snider; Anthony Stentz; Ziv Wolkowicki; Jason Ziglar


ieee intelligent vehicles symposium | 2006

Autonomous Driving in Structured and Unstructured Environments

Sascha Kolski; Dave Ferguson; Mario Bellino; Roland Siegwart


international conference on mechatronics | 2004

A Lane Detection Vision Module for Driver Assistance

Kristijan Maček; Brian Williams; Sascha Kolski; Roland Siegwart


Archive | 2006

Mapping with an Autonomous Car

Cyrill Stachniss; Rudolph Triebel; Patrick Pfaff; Christian Plagemann; Giorgio Grisetti; Sascha Kolski; Wolfram Burgard; Roland Siegwart


Procedings of The 1st Range Imaging Research Day | 2005

Laser Range Imaging using Mobile Robots: From Pose Estimation to 3d-Models

Björn Jensen; Jan W. Weingarten; Sascha Kolski; Roland Siegwart


international conference on robotics and automation | 2007

Path Planning, Replanning, and Execution for Autonomous Driving in Urban and Offroad Environments

Roland Philippsen; Sascha Kolski; Kristijan Maček; Roland Siegwart


international conference on robotics and automation | 2008

Mobile Robot Planning in Dynamic Environments and on Growable Costmaps

Roland Philippsen; Sascha Kolski; Kristijan Maček; Björn Jensen

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Marcelo Becker

University of São Paulo

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Björn Jensen

École Polytechnique Fédérale de Lausanne

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Jan W. Weingarten

École Polytechnique Fédérale de Lausanne

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Chris Urmson

Carnegie Mellon University

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Richard Hall

Royal Institute of Technology

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B. Jensen

École Polytechnique Fédérale de Lausanne

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