Affiliation:
1. Nanjing University of Science and Technology
2. Shanghai University
Abstract
Non-line-of-sight (NLOS) sensing is an emerging technique that is capable of detecting objects hidden behind a wall, around corners, or behind other obstacles. However, NLOS tracking of moving objects is challenging due to signal redundancy and background interference. Here, we demonstrate computational neuromorphic imaging with an event camera for NLOS tracking, unaffected by the relay surface, which can efficiently obtain non-redundant information. We show how this sensor, which responds to changes in luminance within dynamic speckle fields, allows us to capture the most relevant events for direct motion estimation. The experimental results confirm that our method has superior performance in terms of efficiency, and accuracy, which greatly benefits from focusing on well-defined NLOS object tracking.
Funder
Research Grants Council of Hong Kong
ACCESS — AI Chip Center for Emerging Smart Systems, sponsored by InnoHK funding, Hong Kong SAR
National Natural Science Foundation of China