Prediction of Depth Camera Missing Measurements Using Deep Learning for Next Best View Planning
Proceedings - IEEE International Conference on Robotics and Automation, ISSN: 1050-4729, Page: 8711-8717
2022
- 2Citations
- 10Captures
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Conference Paper Description
Depth images usually contain pixels with invalid measurements. This paper presents a deep learning approach that receives as input a partially-known volumetric model of the environment and a camera pose, and it predicts the probability that a pixel would contain a valid depth measurement if a camera was placed at the given pose. The proposed network architecture consists of a 3D Convolutional Neural Network (CNN) module and a 2D CNN module, connected by a deep learning attention-based projection module. The method was integrated into a CNN-based probabilistic Next Best View plan-ner, resulting in a more realistic prediction of the information gain for each possible viewpoint with respect to state of the art approaches. Experiments were carried out in tabletop scenarios using a robot manipulator with an eye-in-hand depth camera.
Bibliographic Details
Institute of Electrical and Electronics Engineers (IEEE)
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