CVFeb 13, 2019

Gated2Depth: Real-time Dense Lidar from Gated Images

arXiv:1902.04997v371 citationsHas Code
Originality Highly original
AI Analysis

This provides a low-cost, dense depth sensing solution for autonomous driving and robotics, addressing limitations of existing lidar systems.

The authors tackled the problem of generating high-resolution depth maps from gated camera images, achieving depth accuracy comparable to pulsed lidar with at least 80m range and real-time performance, validated on real-world driving data over 4,000km.

We present an imaging framework which converts three images from a gated camera into high-resolution depth maps with depth accuracy comparable to pulsed lidar measurements. Existing scanning lidar systems achieve low spatial resolution at large ranges due to mechanically-limited angular sampling rates, restricting scene understanding tasks to close-range clusters with dense sampling. Moreover, today's pulsed lidar scanners suffer from high cost, power consumption, large form-factors, and they fail in the presence of strong backscatter. We depart from point scanning and demonstrate that it is possible to turn a low-cost CMOS gated imager into a dense depth camera with at least 80m range - by learning depth from three gated images. The proposed architecture exploits semantic context across gated slices, and is trained on a synthetic discriminator loss without the need of dense depth labels. The proposed replacement for scanning lidar systems is real-time, handles back-scatter and provides dense depth at long ranges. We validate our approach in simulation and on real-world data acquired over 4,000km driving in northern Europe. Data and code are available at https://github.com/gruberto/Gated2Depth.

Code Implementations2 repos
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes