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Title
BEE-SLAM: A 65nm 17.96 TOPS/W 97.55%-Sparse-Activity Hybrid Mixed-Signal/Digital Multi-Agent Neuromorphic SLAM Accelerator for Swarm Robotics
Issued Date
2024-04-23
Citation
Lee, Jaehyun. (2024-04-23). BEE-SLAM: A 65nm 17.96 TOPS/W 97.55%-Sparse-Activity Hybrid Mixed-Signal/Digital Multi-Agent Neuromorphic SLAM Accelerator for Swarm Robotics. 44th Annual IEEE Custom Integrated Circuits Conference, CICC 2024, 1–2. doi: 10.1109/CICC60959.2024.10529026
Type
Conference Paper
ISBN
9798350394061
ISSN
2152-3630
Abstract
Multi-agent (MA) AI holds great promise for enhancing edge devices with limited computing resources [1]. In particular, MA simultaneous localization and mapping (SLAM) is actively under investigation to improve map accuracy in swarm robotics. Conventional keyframe-based SLAM, leveraging landmarks [2]-[4], provides the appropriate map accuracy but is unsuitable for MA SLAM on decentralized edge devices due to computational complexity. The neuromorphic SLAM is a candidate for MA SLAM owing to its low complexity in singleagent operation [5]. However, this method is still infeasible in MA SLAM due to the drastic increase of complexity in MA map correction. As such, several challenges need to be addressed via circuit-algorithm co-design in deploying MA SLAM to edge devices. In this paper, we present the BEE-SLAM accelerator, inspired by bee communication, featuring hybrid mixed-signal/digital biomimetic circuits and MA map error correction (MAEC), achieving the energy efficiency of 17.96 TOPS/W in outdoor MA SLAM operation. © 2024 IEEE.
URI
http://hdl.handle.net/20.500.11750/57275
DOI
10.1109/CICC60959.2024.10529026
Publisher
IEEE Solid-State Circuits Society
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송민영
Song, Minyoung송민영

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