使用深度学习技术研究鹿的检测和运动

Md. Jawad Siddique, Khaled R. Ahmed
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引用次数: 0

摘要

鹿车碰撞(DVCs)是道路安全的一个主要问题,会导致人类生命、财产和野生动物的损失。DVCs主要发生在每年的第四季度,这时鹿更活跃,注意力更少。由于车辆数量的增加和智能公路安全和警报系统的缺乏,DVCs正在增加。最具挑战性的问题之一是在白天和夜间检测鹿及其在道路上的运动,以减少DVCs。因此,本文提出了一种鹿的检测和运动,DDM技术,以自动化DVCs缓解系统DDM结合了计算机视觉,人工智能方法和深度学习技术。DDM包括两种主要的深度学习算法:1)基于Yolov5的单阶段深度学习算法,生成检测鹿的检测模型(DM); 2)由python工具包DeepLabCut开发的深度学习算法,生成检测鹿的运动模型(MM)。所提出的方法可以用99。7%的精度和对检测到的鹿使用deeplabcuttoolkit,我们可以确定鹿是移动的还是静止的,推理速度为$\theta$。29日。
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DDM: Study Of Deer Detection And Movement Using Deep Learning Techniques
Deer Vehicle Collisions (DVCs) is a major concern in road safety that results in loss of human life, properties and wildlife. DVCs mostly occurs during the fourth quarter of the year when deer are more active andless attentive. DVCs are increasing due to the increase in number of vehicles and the absence of intelligent highway safety and alert systems. One of the most challenging issues is to detect deer and its movement on roadways during both day and nighttime to mitigate DVCs. Thus, this paper proposed a deer detection and movement, DDM technique to automate DVCs mitigation system The DDM combines computer vision, artificial intelligent methods with deep learning techniques. DDM includes two main deep learning algorithms 1) one-stage deep learning algorithm based on Yolov5 that generates a detection model (DM) to detect deer and 2) deep learning algorithm developed by python toolkit DeepLabCut to generate movement model (MM) for detecting the movement of the deer. The proposed method can detect deer with 99. 7% precision and usingDeepLabCuttoolkit on the detected deer we can ascertain if the deer is moving or static with an inference speed of $\theta$. 29s.
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