Invention Grant
- Patent Title: Method for predicting structure of indoor space using radio propagation channel analysis through deep learning
-
Application No.: US17051541Application Date: 2018-04-30
-
Publication No.: US12096237B2Publication Date: 2024-09-17
- Inventor: Seong-Cheol Kim , Jung-Yong Lee
- Applicant: Seoul National University R&DB Foundation
- Applicant Address: KR Seoul
- Assignee: Seoul National University R&DBFoundation
- Current Assignee: Seoul National University R&DBFoundation
- Current Assignee Address: KR Seoul
- Agency: DALY, CROWLEY, MOFFORD & DURKEE, LLP
- Priority: KR 20180049639 2018.04.30
- International Application: PCT/KR2018/005029 2018.04.30
- International Announcement: WO2019/212069A 2019.11.07
- Date entered country: 2021-09-29
- Main IPC: H04W4/00
- IPC: H04W4/00 ; G06N3/02 ; H04B17/318 ; H04B17/364 ; H04W16/20 ; H04W24/10 ; G06N20/00

Abstract:
A method for predicting a structure of an indoor space using radio propagation channel analysis through deep-learning is disclosed. Channel data of radio signals are collected for various indoor spaces, and radio channel parameter data such as PDP, AoA, and AoD are extracted therefrom. A large amount of propagation channel parameter data is input to an artificial neural network together with vertex coordinate data of the corresponding indoor space and deep-learning is performed in advance. The propagation channel parameter data are extracted from the indoor space to be predicted, the best matching indoor space is detected based on the trained artificial neural network. The best matching indoor space is predicted as the structure of the indoor space.
Public/Granted literature
Information query