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High-Fidelity Depth Upsampling Using the Self-Learning Framework

Author(s)
Shim, Inwook; Kweon, In So; Oh, Taehyun
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Abstract
This paper presents a depth upsampling method that produces a high-fidelity dense depth map using a high-resolution RGB image and LiDAR sensor data. Our proposed method explicitly handles depth outliers and computes a depth upsampling with confidence information. Our key idea is the self-learning framework, which automatically learns to estimate the reliability of the upsampled depth map without human-labeled annotation. Thereby, our proposed method can produce a clear and high-fidelity dense depth map that preserves the shape of object structures well, which can be favored by subsequent algorithms for follow-up tasks. We qualitatively and quantitatively evaluate our proposed method by comparing other competing methods on the well-known Middlebury 2014 and KITTIbenchmark datasets. We demonstrate that our method generates accurate depth maps with smaller errors favorable against other methods while preserving a larger number of valid points, as we also show that our approach can be seamlessly applied to improve the quality of depth maps from other depth generation algorithms such as stereo matching and further discuss potential applications and limitations. Compared to previous work, our proposed method has similar depth errors on average, while retaining at least 3% more valid depth points. Keywords: depth upsampling; depth filtering; LiDAR; self-learning; self-supervised learning
Date issued
2018-12
URI
http://hdl.handle.net/1721.1/120468
Department
Massachusetts Institute of Technology. Computer Science and Artificial Intelligence Laboratory
Journal
Sensors
Publisher
Multidisciplinary Digital Publishing Institute
Citation
Shim, Inwook et al. "High-Fidelity Depth Upsampling Using the Self-Learning Framework." Sensors 19, 1 (December 2018): 81 © The Authors
Version: Final published version
ISSN
1424-8220

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