Javascript must be enabled to continue!
Detail Guided Multilateral Segmentation Network for Real-Time Semantic Segmentation
View through CrossRef
With the development of unmanned vehicles and other technologies, the technical demand for scene semantic segmentation is more and more intense. Semantic segmentation requires not only rich high-level semantic information, but also rich detail information to ensure the accuracy of the segmentation task. Using a multipath structure to process underlying and semantic information can improve efficiency while ensuring segmentation accuracy. In order to improve the segmentation accuracy and efficiency of some small and thin objects, a detail guided multilateral segmentation network is proposed. Firstly, in order to improve the segmentation accuracy and model efficiency, a trilateral parallel network structure is designed, including the context fusion path (CF-path), the detail information guidance path (DIG-path), and the semantic information supplement path (SIS-path). Secondly, in order to effectively fuse semantic information and detail information, a feature fusion module based on an attention mechanism is designed. Finally, experimental results on CamVid and Cityscapes datasets show that the proposed algorithm can effectively balance segmentation accuracy and inference speed.
Title: Detail Guided Multilateral Segmentation Network for Real-Time Semantic Segmentation
Description:
With the development of unmanned vehicles and other technologies, the technical demand for scene semantic segmentation is more and more intense.
Semantic segmentation requires not only rich high-level semantic information, but also rich detail information to ensure the accuracy of the segmentation task.
Using a multipath structure to process underlying and semantic information can improve efficiency while ensuring segmentation accuracy.
In order to improve the segmentation accuracy and efficiency of some small and thin objects, a detail guided multilateral segmentation network is proposed.
Firstly, in order to improve the segmentation accuracy and model efficiency, a trilateral parallel network structure is designed, including the context fusion path (CF-path), the detail information guidance path (DIG-path), and the semantic information supplement path (SIS-path).
Secondly, in order to effectively fuse semantic information and detail information, a feature fusion module based on an attention mechanism is designed.
Finally, experimental results on CamVid and Cityscapes datasets show that the proposed algorithm can effectively balance segmentation accuracy and inference speed.
Related Results
Economical Multilateral Well Technology for Canadian Heavy Oil
Economical Multilateral Well Technology for Canadian Heavy Oil
Abstract
In the last two years there has been a dramatic increase in the pace of the evolution of multilateral systems. Many systems with new features and improve...
Multilateral Technology Innovations Ready to Maximize Field Development
Multilateral Technology Innovations Ready to Maximize Field Development
Abstract
For a quarter of a century sustained technological advances in multilateral technology have enhanced economics and extended the production life of fields in...
Screening Variables for Multilateral Technology
Screening Variables for Multilateral Technology
Abstract
The multilateral well was one of the leading technologies of 1999, and it will continue to be one of the leading technologies for the next 5-10 years. It...
A Semantic Orthogonal Mapping Method Through Deep-Learning for Semantic Computing
A Semantic Orthogonal Mapping Method Through Deep-Learning for Semantic Computing
In order to realize an artificial intelligent system, a basic mechanism should be provided for expressing and processing the semantic. We have presented semantic computing models i...
Case Histories: Drilling and Completing Multilateral Horizontal Wells in the Middle East
Case Histories: Drilling and Completing Multilateral Horizontal Wells in the Middle East
Abstract
The changing economics of oilfield development has resulted in operators, and therefore, service companies, being challenged to produce greater quantitie...
Multilateral History - Deepest Level 4 Cemented Junction Installation
Multilateral History - Deepest Level 4 Cemented Junction Installation
Abstract
An operator was challenged with increasing production efficiencies from new single wellbores in the deep Tarim basin reservoirs of China. To increase and op...
Overcoming the Perceived Risk of Multilateral Wells
Overcoming the Perceived Risk of Multilateral Wells
Abstract
Multilaterals are often cited as technology that can be implemented to maximize reservoir recovery rates. However, few operators have been willing to put mu...
AI‐enabled precise brain tumor segmentation by integrating Refinenet and contour‐constrained features in MRI images
AI‐enabled precise brain tumor segmentation by integrating Refinenet and contour‐constrained features in MRI images
AbstractBackgroundMedical image segmentation is a fundamental task in medical image analysis and has been widely applied in multiple medical fields. The latest transformer‐based de...

