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 proposed in this paper, named Cross-Domain Adaptation and Transfer Learning Network (Ct-Net), which has shown valuable results in multiple robot scenes. First, this paper introduces a General Feature Extractor to extract rich gen...
This article presents a new algorithm for object detection using stereo camera system. The problem t...
Stereo matching techniques play an important role in many real world applications like robot stereo ...
Stereo vision is a method of depth perception, in which depth information is inferred from two (or m...
Binocular stereo vision has the advantages of low cost and wide applicability. It is extensively use...
Stereo matching networks based on deep learning are widely developed and can obtain excellent dispar...
The use of visual information in real time applications such as in robotic pick, navigation, obstacl...
Deep end-to-end learning based stereo matching methods have achieved great success as witnessed by t...
Visual signals are the upmost important source for robots, vehicles or machines to achieve human-lik...
This paper proposes a new hybrid method between the learning-based and handcrafted methods for a ste...
Robust and accurate object detection are needed for the applications to mobile robots. Unfortunatel...
Stereo matching algorithm plays an important role in an autonomous vehicle navigation system to ensu...
In this paper, we propose a new area-based stereo matching method by improving the classical Census ...
Stereo vision is a flourishing field, attracting the attention of many researchers. Recently, levera...
In this paper, we propose a new area-based stereo matching method by improving the classical Census ...
Three-dimensional information is often used in robotics and 3D-mapping. There exist several ways to ...
This article presents a new algorithm for object detection using stereo camera system. The problem t...
Stereo matching techniques play an important role in many real world applications like robot stereo ...
Stereo vision is a method of depth perception, in which depth information is inferred from two (or m...
Binocular stereo vision has the advantages of low cost and wide applicability. It is extensively use...
Stereo matching networks based on deep learning are widely developed and can obtain excellent dispar...
The use of visual information in real time applications such as in robotic pick, navigation, obstacl...
Deep end-to-end learning based stereo matching methods have achieved great success as witnessed by t...
Visual signals are the upmost important source for robots, vehicles or machines to achieve human-lik...
This paper proposes a new hybrid method between the learning-based and handcrafted methods for a ste...
Robust and accurate object detection are needed for the applications to mobile robots. Unfortunatel...
Stereo matching algorithm plays an important role in an autonomous vehicle navigation system to ensu...
In this paper, we propose a new area-based stereo matching method by improving the classical Census ...
Stereo vision is a flourishing field, attracting the attention of many researchers. Recently, levera...
In this paper, we propose a new area-based stereo matching method by improving the classical Census ...
Three-dimensional information is often used in robotics and 3D-mapping. There exist several ways to ...
This article presents a new algorithm for object detection using stereo camera system. The problem t...
Stereo matching techniques play an important role in many real world applications like robot stereo ...
Stereo vision is a method of depth perception, in which depth information is inferred from two (or m...