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X-WR-CALDESC:Events for University of Toronto Robotics Institute
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DTSTART:20260101T000000
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DTSTART;TZID=UTC:20260417T150000
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UID:43677-1776438000-1776441600@robotics.utoronto.ca
SUMMARY:Robotics Institute Seminar: Risto Ojala\, "Perception solutions for enabling automated driving in winter conditions"
DESCRIPTION:Perception solutions for enabling automated driving in winter conditions \nJoin in MY580 or online (Zoom) \nThis talk presents methods and findings from research on perception solutions for automated driving in winter conditions\, carried out at the Autonomy & Mobility Laboratory\, Aalto University. Winter conditions pose several challenges for automated vehicle perception pipelines\, which currently limit the applicability of the technology in adverse weather conditions. The talk focuses on two main research directions: denoising snowflakes from LiDAR data and road segmentation in snowy conditions. Airborne snowflakes introduce significant noise into LiDAR scans\, which can hinder downstream perception tasks. To address this challenge\, the talk presents deep learning approaches for point cloud denoising based on both supervised and self-supervised learning. In addition\, snowy conditions drastically alter the visual appearance of the environment and the road\, rendering road segmentation methods trained on traditional datasets unreliable. To overcome this\, trajectory-based approaches leveraging vision foundation models are presented for learning varied road appearance without requiring manual labeling. \nSpeaker bio \nRisto Ojala (DSc\, Tech) is an Assistant Professor at Aalto University\, Finland\, where he leads the Autonomy & Mobility Laboratory within the Mechatronics research group. His research focuses on intelligent vehicles and mobile robotics\, with particular emphasis on perception\, sensor fusion\, and applied machine learning for autonomous systems. He is also currently a Visiting Scholar at Simon Fraser University\, Canada\, collaborating with the Multi-Agent Robotic Systems Laboratory on research in semantic understanding for mobile robotics. His work develops perception solutions that enable robust autonomous operation in challenging environments. A central application of his research is automated driving in winter conditions\, addressing problems such as scene understanding\, situational awareness\, and perception reliability. His work has been published in leading robotics and intelligent transportation venues and he collaborates closely with both academic and industrial partners.
URL:https://robotics.utoronto.ca/event/robotics-institute-seminar-risto-ojala-aalto-university/
LOCATION:Myhal Centre for Engineering Innovation & Entrepreneurship\, Room 580\, or on Zoom\, 55 St. George Street\, Toronto\, Ontario\, M5S 0C9\, Canada
CATEGORIES:U of T Robotics Institute Seminar Series
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