2023
DOI: 10.1109/lra.2023.3266670
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ST-DepthNet: A Spatio-Temporal Deep Network for Depth Completion Using a Single Non-Repetitive Circular Scanning Lidar

Abstract: In this paper, we propose a novel depth image completion technique based on sparse consecutive measurements of a non-repetitive circular scanning (NRCS) Lidar, demonstrating the capabilities of a new, compact, and accessible sensor technology for dense range mapping of highly dynamic scenes. Our deep network called ST-DepthNet is composed of a spatio-temporally (ST) extended U-Net architecture, which accepts a very sparse range data sequence as input and produces a dense depth image stream of the same field-of… Show more

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Cited by 4 publications
(1 citation statement)
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“…That is why this problem is commonly referred to as depth completion [16]. As the targeted resolution comes from an image, images help (with a few exceptions, e.g., [17,18] or [19] for special sensor characteristics) in the process of pixel-wise depth estimation. There are different approaches to performing this, such as semantic-based up-sampling [20], but deep-learning-based methods (e.g., [5,6]) are currently the most successful ones.…”
Section: Spatial Up-samplingmentioning
confidence: 99%
“…That is why this problem is commonly referred to as depth completion [16]. As the targeted resolution comes from an image, images help (with a few exceptions, e.g., [17,18] or [19] for special sensor characteristics) in the process of pixel-wise depth estimation. There are different approaches to performing this, such as semantic-based up-sampling [20], but deep-learning-based methods (e.g., [5,6]) are currently the most successful ones.…”
Section: Spatial Up-samplingmentioning
confidence: 99%