2023
DOI: 10.1038/s41598-023-39964-z
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An application of stereo matching algorithm based on transfer learning on robots in multiple scenes

Yuanwei Bi,
Chuanbiao Li,
Xiangrong Tong
et al.

Abstract: Robot vision technology based on binocular vision holds tremendous potential for development in various fields, including 3D scene reconstruction, target detection, and autonomous driving. However, current binocular vision methods used in robotics engineering have limitations such as high costs, complex algorithms, and low reliability of the generated disparity map in different scenes. To overcome these challenges, a cross-domain stereo matching algorithm for binocular vision based on transfer learning was pro… Show more

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Cited by 5 publications
(1 citation statement)
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“…Advanced DSM generation algorithms employing Vertical Line Locus (VLL) with random propagation 13 and Multi-View Vertical Line Locus (MVLL) with semi-global constraints 14 have also been developed. Finally, the integration of deep learning in dense matching utilizes 3D convolutional neural networks to derive disparity maps from stereo image pairs 15 17 . Despite its potential, this method faces limitations in training sample time consumption and the size of training sets.…”
Section: Introductionmentioning
confidence: 99%
“…Advanced DSM generation algorithms employing Vertical Line Locus (VLL) with random propagation 13 and Multi-View Vertical Line Locus (MVLL) with semi-global constraints 14 have also been developed. Finally, the integration of deep learning in dense matching utilizes 3D convolutional neural networks to derive disparity maps from stereo image pairs 15 17 . Despite its potential, this method faces limitations in training sample time consumption and the size of training sets.…”
Section: Introductionmentioning
confidence: 99%