DELTA: Dense Depth from Events and LiDAR using Transformer's Attention
DELTA: Dense Depth from Events and LiDAR using Transformer's Attention
Event cameras and LiDARs provide complementary yet distinct data: respectively, asynchronous detections of changes in lighting versus sparse but accurate depth information at a fixed rate. To this day, few works have explored the combination of these two modalities. In this article, we propose a novel neural-network-based method for fusing event and LiDAR data in order to estimate dense depth maps. Our architecture, DELTA, exploits the concepts of self- and cross-attention to model the spatial and temporal relations within and between the event and LiDAR data. Following a thorough evaluation, we demonstrate that DELTA sets a new state of the art in the event-based depth estimation problem, and that it is able to reduce the errors up to four times for close ranges compared to the previous SOTA.
Vincent Brebion、Julien Moreau、Franck Davoine
计算技术、计算机技术
Vincent Brebion,Julien Moreau,Franck Davoine.DELTA: Dense Depth from Events and LiDAR using Transformer's Attention[EB/OL].(2025-05-05)[2025-06-06].https://arxiv.org/abs/2505.02593.点此复制
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