24 Papers
74 Citations
Rong Fei is an academic researcher from Xi'an University of Science and Technology. The author has contributed to research in topics: Artificial neural network & Computer science. The author has an hindex of 6, co-authored 23 publications.
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Papers
Motion trajectory prediction based on a CNN-LSTM sequential model
TL;DR: Experimental results demonstrate that the proposed CNN-LSTM method is more accurate and features a shorter time cost, which meets the prediction requirements and provides an effective method for the safe operation of unmanned systems.
166
Patent
System and method for deleting repeating data
Wang Lei,Ren Zhengang,Hei Xinhong,Gao Kuo,Rong Fei +4 more
- 26 Jun 2013
TL;DR: In this paper, a distributed system for deleting repeating data is proposed, which consists of a client side, a management server and memory node servers, where the erasure code encoding and the data compression are carried out on segmentation blocks, the compressed data blocks are stored in the different memory nodes in a scattered mode, once a part of memory nodes break down, the saved data in the rest memory nodes can be used for carrying out file restoring, the reliability of the system for delete the repeating data was improved, and waste of a memory space is reduced.
23
Patent
Statistical learning model based gate position allocation method
Wang Lei,Ru Xingxing,Li Yan,Hei Xinhong,Rong Fei +4 more
- 01 Jul 2015
TL;DR: In this paper, a statistical learning model based gate position allocation method is proposed for airside allocation, which facilitates adjustment on only close gate positions of flights and shortens walking distances of passengers.
13
The Driver Time Memory Car-Following Model Simulating in Apollo Platform with GRU and Real Road Traffic Data
TL;DR: Wang et al. as discussed by the authors proposed a car-following model (CFDT) with driver time memory based on real-world traffic data, which is firstly constructed by embedded gantry control unit storage capacity (GRU assisted) network, and then the model is calibrated to obtain the driver's driving memory and the optimal parameters of the model and structure.