Robust Monocular Visual-Inertial Depth Completion for Embedded SystemsDownload PDFOpen Website

2021 (modified: 16 Nov 2022)ICRA 2021Readers: Everyone
Abstract: In this work we augment our prior state-of-the-art visual-inertial odometry (VIO) system, OpenVINS [1], to produce accurate dense depth by filling in sparse depth estimates (depth completion) from VIO with image guidance – all while focusing on enabling real-time performance of the full VIO+depth system on embedded devices. We show that noisy depth values with varying sparsity produced from a VIO system can not only hurt the accuracy of predicted dense depth maps, but also make them considerably worse than those from an image-only depth network with the same underlying architecture. We investigate this sensitivity on both an outdoor simulated and indoor handheld RGB-D dataset, and present simple yet effective solutions to address these shortcomings of depth completion networks. The key changes to our state-of-the-art VIO system required to provide high quality sparse depths for the network while still enabling efficient state estimation on embedded devices are discussed. A comprehensive computational analysis is performed over different embedded devices to demonstrate the efficiency and accuracy of the proposed VIO depth completion system.
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