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Pre-Conference Talk by KANATTA GAMAGE Ramesh Darshana Rathnayake

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LILOC: Enabling Precise 3D Localization in
Dynamic Indoor Environments using LIDARs

Speaker (s):

KANATTA GAMAGE Ramesh Darshana Rathnayake
PhD Candidate
School of Computing and Information Systems
Singapore Management University

Date:

Time:

Venue:

 

24 April 2023, Monday

11:00am – 11:30am

Meeting Room 5.1 Level 5
School of Computing & Information Systems 1
Singapore Management University
80 Stamford Road Singapore 178902
 

Please register by 23 April 2023

About the Talk

We present LiLoc, a system for precise 3D localization and tracking of mobile IoT devices (e.g., robots) in indoor environments using multi-perspective LiDAR sensing. The key differentiators in our work are: (a) First, unlike traditional localization approaches, our approach is robust to dynamically changing environmental conditions (e.g., varying crowd levels, object placement/layout changes); (b) Second, unlike prior work on visual and 3D SLAM, LiLoc is not dependent on a pre-built static map of the environment and instead works by utilizing dynamically updated point clouds captured from both infrastructural-mounted LiDARs and LiDARs equipped on individual mobile IoT devices. To achieve fine-grained, near real-time location tracking, it employs complex 3D ‘global’ registration among the two point clouds only intermittently to obtain robust spot location estimates and further augments it with repeated simpler ‘local’ registrations to update the trajectory of IoT device continuously. We demonstrate that LiLoc can (a) support accurate location tracking with location and pose estimation error being <=7.4cm and <=3.2◦ respectively for 84% of the time and the median error increasing only marginally (8%), for correctly estimated trajectories, when the ambient environment is dynamic, (b) achieve a 36% reduction in median location estimation error compared to an approach that uses only quasi-static global point cloud, and (c) obtain spot location estimates with a latency of only 973 msecs.

This is a Pre-Conference talk for 8th ACM/IEEE Conference on Internet of Things Design and Implementation (IoTDI 2023).
 

About the Speaker

Darshana Rathnayake is a second-year Ph.D. candidate at the Singapore Management University's School of Computing and Information Systems, where he is pursuing research in the field of Pervasive Sensing and Systems.