基于优化深度神经网络的特定范围自动驾驶汽车运动目标检测与跟踪优化

Fahimeh Nezhadalinaei, Lei Zhang, Mohammad Mahdizadeh, Faezeh Jamshidi
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引用次数: 2

摘要

近年来,自动驾驶汽车在全球越来越受欢迎。这项技术的潜力是显而易见的,预计交通运输将比目前已知的发生巨大变化。自动驾驶汽车的优点是由于驾驶和燃油效率的提高,有助于控制交通流量和停车问题,从而减少城市地区的污染。此外,自动驾驶汽车加速了人员和货物的运输,并减少了人为错误。在自动驾驶汽车领域存在着各种各样的问题,其中之一就是运动物体作为障碍物的检测和跟踪问题。在这篇文章中,我们提出了一种新的方法来优化自动驾驶汽车在50到80米的特定范围内的KITTI数据集的运动物体检测和跟踪。该方法提出了一种实时、同步的运动检测和跟踪结构,使数据充分进入基于crf的深度脉冲神经网络与概率粒子滤波(PPF-DSNN)的组合方法。实际上,基于crf的深度尖峰神经网络用于训练和测试数据,提取特征和概率粒子滤波方法,目的是检测和跟踪这些运动物体。结果表明,与现有方法相比,该方法是高效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Motion Object Detection and Tracking Optimization in Autonomous Vehicles in Specific Range with Optimized Deep Neural Network
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.
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