Spot-the-Camel: Computer Vision for Safer Roads

Khalid AlNujaidi, Ghadah AlHabib, Abdulaziz AlOdhieb
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Abstract

As the population grows and more land is being used for urbanization, ecosystems are disrupted by our roads and cars. This expansion of infrastructure cuts through wildlife territories, leading to many instances of Wildlife-Vehicle Collision (WVC). These instances of WVC are a global issue that is having a global socio-economic impact, resulting in billions of dollars in property damage and, at times, fatalitiesfor vehicle occupants. In Saudi Arabia, this issue is similar, with instances of Camel-Vehicle Collision (CVC) being particularly deadly due to the large size of camels, which results in a 25% fatality rate [1].The focus of this work is to test different object detection models on the task of detecting camels on theroad. The Deep Learning (DL) object detection models used in the experiments are: CenterNet, Efficient Det, Faster R-CNN, SSD, and YOLOv8. Results of the experiments show that YOLOv8 performed the best in terms of accuracy and was the most efficient in training. In the future, the plan is to expand on this work by developing a system to make countryside roads safer.
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发现骆驼:计算机视觉安全道路
随着人口的增长和越来越多的土地被用于城市化,我们的道路和汽车破坏了生态系统。这种基础设施的扩张穿过了野生动物的领地,导致了许多野生动物与车辆碰撞(WVC)的事件。这些WVC事件是一个全球性问题,对全球社会经济产生影响,造成数十亿美元的财产损失,有时还造成车辆乘员死亡。在沙特阿拉伯,这一问题也类似,由于骆驼体型庞大,骆驼与车辆碰撞(CVC)的情况尤为严重,死亡率高达25%[1]。本工作的重点是测试不同的目标检测模型对道路上骆驼的检测任务。实验中使用的深度学习(DL)对象检测模型有:CenterNet、Efficient Det、Faster R-CNN、SSD和YOLOv8。实验结果表明,YOLOv8在准确率方面表现最好,在训练中效率最高。未来,该计划将通过开发一个系统来扩大这项工作,使农村道路更安全。
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