TY - GEN
T1 - Motion Object Detection and Tracking Optimization in Autonomous Vehicles in Specific Range with Optimized Deep Neural Network
AU - Nezhadalinaei, Fahimeh
AU - Zhang, Lei
AU - Mahdizadeh, Mohammad
AU - Jamshidi, Faezeh
N1 - Publisher Copyright:
© 2021 IEEE.
PY - 2021/5/19
Y1 - 2021/5/19
N2 - Autonomous Vehicles have become increasingly popular around the world in recent years. The potential of this technology is clear and transportation is expected to change dramatically over what is known today. The advantages of Autonomous Vehicles are pollution reduction in urban areas due to improved driving and fuel efficiency to help control traffic flow and parking problems. In addition, Autonomous Vehicles accelerate people and cargo transportation, as well as reducing human errors. There are a variety of issues in the field of Autonomous Vehicles which one of them is the issue of detecting and tracking motion objects as obstacles. In this article, we presented a novel method to optimizing motion objects detection and tracking from the KITTI data set in Autonomous Vehicles in a specific range in between 50 to 80 meters. This approach proposes a real-time and simultaneous structure for motion detection and tracking, so that the data fully enter the combined method called CRF-based Deep Spiking Neural Network with Probabilistic Particle Filter (PPF-DSNN). In fact, CRF-based deep spiking neural network is used to train and test data to extract features and probabilistic particle filtering methods with the aim of detecting and tracking these moving objects. The results represent that proposed approach is highly efficient in comparison to recent methods.
AB - Autonomous Vehicles have become increasingly popular around the world in recent years. The potential of this technology is clear and transportation is expected to change dramatically over what is known today. The advantages of Autonomous Vehicles are pollution reduction in urban areas due to improved driving and fuel efficiency to help control traffic flow and parking problems. In addition, Autonomous Vehicles accelerate people and cargo transportation, as well as reducing human errors. There are a variety of issues in the field of Autonomous Vehicles which one of them is the issue of detecting and tracking motion objects as obstacles. In this article, we presented a novel method to optimizing motion objects detection and tracking from the KITTI data set in Autonomous Vehicles in a specific range in between 50 to 80 meters. This approach proposes a real-time and simultaneous structure for motion detection and tracking, so that the data fully enter the combined method called CRF-based Deep Spiking Neural Network with Probabilistic Particle Filter (PPF-DSNN). In fact, CRF-based deep spiking neural network is used to train and test data to extract features and probabilistic particle filtering methods with the aim of detecting and tracking these moving objects. The results represent that proposed approach is highly efficient in comparison to recent methods.
KW - Autonomous Vehicles
KW - Deep Spiking Neural Network (DSNN)
KW - Motion Object Detection and Tracking
KW - Probabilistic Particle Filter (PPF)
UR - https://www.scopus.com/pages/publications/85107637298
U2 - 10.1109/ICWR51868.2021.9443120
DO - 10.1109/ICWR51868.2021.9443120
M3 - 会议稿件
AN - SCOPUS:85107637298
T3 - 2021 7th International Conference on Web Research, ICWR 2021
SP - 53
EP - 63
BT - 2021 7th International Conference on Web Research, ICWR 2021
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 7th International Conference on Web Research, ICWR 2021
Y2 - 19 May 2021 through 20 May 2021
ER -