Javascript must be enabled to continue!
Mobile Phone Indoor Scene Recognition Location Method Based on Semantic Constraint of Building Map
View through CrossRef
At present, indoor localization is one of the core technologies of location-based services (LBS), and there exist numerous scenario-oriented application solutions. Visual features, as the main semantic information to help people understand the environment and thus occupy the dominant part, many techniques about indoor scene recognition are widely adopted. However, the engineering application problem of cell phone indoor scene recognition and localization has not been well solved due to insufficient semantic constraint information of building map and the immaturity of building map location anchors (MLA) matching positioning technology. To address the above problems, this paper proposes a cell phone indoor scene recognition and localization method with building map semantic constraints. Firstly, we build a library of geocoded entities for building map location anchors (MLA), which can provide users with "immersive" real-world building maps on the one hand and semantic anchor point constraints for cell phone positioning on the other. Secondly, using the improved YOLOv5s deep learning model carried on the mobile terminal, we recognize the universal map location anchors (MLA) elements in building scenes by cell phone camera video in real-time. Lastly, the spatial location of the scene elements obtained from the cell phone video recognition is matched with the building MLA to achieve real-time positioning and navigation. The experimental results show that the model recognition accuracy of this method is above 97.2%, and the maximum localization error is within the range of 0.775 m, and minimized to 0.5 m after applying the BIMPN road network walking node constraint, which can effectively achieve high positioning accuracy in the building scenes with rich MLA element information. In addition, the building map location anchors (MLA) has universal characteristics, and the positioning algorithm based on scene element recognition is compatible with the extension of indoor map data types, so this method has good prospects for engineering applications.
Title: Mobile Phone Indoor Scene Recognition Location Method Based on Semantic Constraint of Building Map
Description:
At present, indoor localization is one of the core technologies of location-based services (LBS), and there exist numerous scenario-oriented application solutions.
Visual features, as the main semantic information to help people understand the environment and thus occupy the dominant part, many techniques about indoor scene recognition are widely adopted.
However, the engineering application problem of cell phone indoor scene recognition and localization has not been well solved due to insufficient semantic constraint information of building map and the immaturity of building map location anchors (MLA) matching positioning technology.
To address the above problems, this paper proposes a cell phone indoor scene recognition and localization method with building map semantic constraints.
Firstly, we build a library of geocoded entities for building map location anchors (MLA), which can provide users with "immersive" real-world building maps on the one hand and semantic anchor point constraints for cell phone positioning on the other.
Secondly, using the improved YOLOv5s deep learning model carried on the mobile terminal, we recognize the universal map location anchors (MLA) elements in building scenes by cell phone camera video in real-time.
Lastly, the spatial location of the scene elements obtained from the cell phone video recognition is matched with the building MLA to achieve real-time positioning and navigation.
The experimental results show that the model recognition accuracy of this method is above 97.
2%, and the maximum localization error is within the range of 0.
775 m, and minimized to 0.
5 m after applying the BIMPN road network walking node constraint, which can effectively achieve high positioning accuracy in the building scenes with rich MLA element information.
In addition, the building map location anchors (MLA) has universal characteristics, and the positioning algorithm based on scene element recognition is compatible with the extension of indoor map data types, so this method has good prospects for engineering applications.
Related Results
Parent's Perception Regarding the Effects of Excessive Use of Mobile Phone on Children's Health: A Sociological Study in City Dera Ghazi Khan
Parent's Perception Regarding the Effects of Excessive Use of Mobile Phone on Children's Health: A Sociological Study in City Dera Ghazi Khan
The use of mobile phones among children has major effects on their health. Excessive and unrestricted use of mobile phones can contribute to various physical and psychological prob...
Mobile phone indoor scene features recognition localization method based on semantic constraint of building map location anchor
Mobile phone indoor scene features recognition localization method based on semantic constraint of building map location anchor
Abstract
Visual features play a key role in indoor positioning and navigation services as the main semantic information to help people understand the environment. Ho...
Everyday Life in the "Tourist Zone"
Everyday Life in the "Tourist Zone"
This article makes a case for the everyday while on tour and argues that the ability to continue with everyday routines and social relationships, while at the same time moving thro...
Negotiating Mobile Phone Usage for MHealth by Maternal Healthcare Clients Who Do Not Own Mobile Phones in rural Malawi
Negotiating Mobile Phone Usage for MHealth by Maternal Healthcare Clients Who Do Not Own Mobile Phones in rural Malawi
In poor-resource settings, owning a mobile phone could be an advantage to using developmental interventions based on mobile phones. However, maternal mHealth interventions in these...
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...
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...
Smart mobile phone usage pattern by students of professional colleges and it’s dependence: A comparative profile
Smart mobile phone usage pattern by students of professional colleges and it’s dependence: A comparative profile
Background: Mobile phones have become an indispensable part of modern human life. With the ever-increasing utilization of smart phones, several psychological & behavioural prob...
Towards Mobile Information Systems for Indoor Space
Towards Mobile Information Systems for Indoor Space
With the rapid development of Internet of things (IOT) and indoor positioning technologies such as Wi-Fi and RFID, indoor mobile information systems have become a new research hots...

