Javascript must be enabled to continue!
Real-Time 3D Reconstruction Method Based on Monocular Vision
View through CrossRef
Real-time 3D reconstruction is one of the current popular research directions of computer vision, and it has become the core technology in the fields of virtual reality, industrialized automatic systems, and mobile robot path planning. Currently, there are three main problems in the real-time 3D reconstruction field. Firstly, it is expensive. It requires more varied sensors, so it is less convenient. Secondly, the reconstruction speed is slow, and the 3D model cannot be established accurately in real time. Thirdly, the reconstruction error is large, which cannot meet the requirements of scenes with accuracy. For this reason, we propose a real-time 3D reconstruction method based on monocular vision in this paper. Firstly, a single RGB-D camera is used to collect visual information in real time, and the YOLACT++ network is used to identify and segment the visual information to extract part of the important visual information. Secondly, we combine the three stages of depth recovery, depth optimization, and deep fusion to propose a three-dimensional position estimation method based on deep learning for joint coding of visual information. It can reduce the depth error caused by the depth measurement process, and the accurate 3D point values of the segmented image can be obtained directly. Finally, we propose a method based on the limited outlier adjustment of the cluster center distance to optimize the three-dimensional point values obtained above. It improves the real-time reconstruction accuracy and obtains the three-dimensional model of the object in real time. Experimental results show that this method only needs a single RGB-D camera, which is not only low cost and convenient to use, but also significantly improves the speed and accuracy of 3D reconstruction.
Title: Real-Time 3D Reconstruction Method Based on Monocular Vision
Description:
Real-time 3D reconstruction is one of the current popular research directions of computer vision, and it has become the core technology in the fields of virtual reality, industrialized automatic systems, and mobile robot path planning.
Currently, there are three main problems in the real-time 3D reconstruction field.
Firstly, it is expensive.
It requires more varied sensors, so it is less convenient.
Secondly, the reconstruction speed is slow, and the 3D model cannot be established accurately in real time.
Thirdly, the reconstruction error is large, which cannot meet the requirements of scenes with accuracy.
For this reason, we propose a real-time 3D reconstruction method based on monocular vision in this paper.
Firstly, a single RGB-D camera is used to collect visual information in real time, and the YOLACT++ network is used to identify and segment the visual information to extract part of the important visual information.
Secondly, we combine the three stages of depth recovery, depth optimization, and deep fusion to propose a three-dimensional position estimation method based on deep learning for joint coding of visual information.
It can reduce the depth error caused by the depth measurement process, and the accurate 3D point values of the segmented image can be obtained directly.
Finally, we propose a method based on the limited outlier adjustment of the cluster center distance to optimize the three-dimensional point values obtained above.
It improves the real-time reconstruction accuracy and obtains the three-dimensional model of the object in real time.
Experimental results show that this method only needs a single RGB-D camera, which is not only low cost and convenient to use, but also significantly improves the speed and accuracy of 3D reconstruction.
Related Results
Monocular Depth Estimation (Literature Review)
Monocular Depth Estimation (Literature Review)
Background. The physiological basis of spatial perception is traditionally attributed to the binocular system, which integrates the signals coming to the brain from each eye into a...
Depth-aware salient object segmentation
Depth-aware salient object segmentation
Object segmentation is an important task which is widely employed in many computer vision applications such as object detection, tracking, recognition, and ret...
Inter-scanner Aβ-amyloid PET harmonization using barrel phantom spatial resolution matching
Inter-scanner Aβ-amyloid PET harmonization using barrel phantom spatial resolution matching
Abstract
The standardized uptake value ratio (SUVR) is used to measure Aβ uptake in PET images of the brain. Variations in PET scanner technologies and image recons...
Vision-specific and psychosocial impacts of low vision among patients with low vision at the eastern regional Low Vision Centre
Vision-specific and psychosocial impacts of low vision among patients with low vision at the eastern regional Low Vision Centre
Purpose: To determine vision-specific and psychosocial implications of low vision among patients with low vision visiting the Low Vision Centre of the Eastern Regional Hospital in ...
Patient informational needs about breast reconstruction post-mastectomy.
Patient informational needs about breast reconstruction post-mastectomy.
88 Background: For many women, receiving a breast cancer diagnosis is further complicated by decisions they will face about breast reconstruction post-mastectomy. While women are ...
Segmental mandibulectomy in patients with oral squamous cell carcinoma: Oncological outcomes and selection criteria for fibula free flap reconstruction
Segmental mandibulectomy in patients with oral squamous cell carcinoma: Oncological outcomes and selection criteria for fibula free flap reconstruction
Purpose: Patients with advanced stage oral cavity squamous cell carcinoma (OSCC) have a poor prognosis despite aggressive multimodal therapy. Segmental mandibulectomy is required i...
Monocular Vision-Based Obstacle Height Estimation for Mobile Robot
Monocular Vision-Based Obstacle Height Estimation for Mobile Robot
To ensure that robots can operate reliably in diverse environments, obstacle detection is essential, which requires the acquisition of depth information of the surrounding environm...
Outdoor SLAM Using Monocular Vision-Based Localization with LIDAR-Aided Mapping for service robot in Highway
Outdoor SLAM Using Monocular Vision-Based Localization with LIDAR-Aided Mapping for service robot in Highway
This paper designed an intelligent service robot system in highway based on multi-sensor fusion. The mobile robot attempts to fuse the lidar information and monocular vision inform...

