基于动物图像检测的公路防撞技术

Mahima R, M. M, Manjari K, Rovenal S, K. S, Sruthi M. P
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引用次数: 0

摘要

与交通有关的伤亡是当今所有工业化国家都在处理的一个严重问题。本研究采用目标识别技术,开发一种低成本和简单的高速公路自动检测和跟踪解决方案,以避免动物与车辆的碰撞。在实际单位中,还开发了一种测量动物与安装摄像机的车辆之间距离的技术。在自然环境中对野生动物的监测必须是有效和可信的,以便更新管理决策。由于它们在捕捉野生动物数据方面的有效性和准确性,自动隐蔽相机陷阱或相机作为一种监测野生动物的工具正变得非常受欢迎。从相机设置中手动拍摄大量的照片和胶片是非常昂贵和繁琐的。对于想要在自然环境中观察野生动物的研究人员和环境科学家来说,这是一个重大障碍。本研究提出了一种开发野生动物自动检测的结构,其目标是基于当前深度学习方法的突破,创建一个自动野生动物监测系统。在识别方面,该方法的总准确率约为85.51%。
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Highway Collision Avoidance by Detection of Animal’s Images
Traffic-related injuries and deaths are a serious problem that all industrialized nations are dealing with today. Object recognition techniques are employed in this study to develop a low cost and simple solution for automated detection and tracking on highways in order to avoid animal-vehicle collisions. In real-world units, a technique for measuring the animal distances from the camera mounted vehicle is also developed. Wild animal monitoring in their natural settings must be efficient and trustworthy in order to update manage decisions. Because of their effectiveness and accuracy in capturing wildlife data in an inconspicuous, continuous, and massive volume, automatic covert camera traps or cameras are becoming extremely popular as a tool for monitoring wildlife. Hand-taking a massive number of photos and films from camera setups is very costly and tedious. It is a significant barrier for researchers and environmental scientists who want to observe wildlife in a natural setting. This research presents a structure for developing automated animal detection in the wild, with the goal of creating an automated wildlife monitoring system, based on current breakthroughs in deep learning methods. In aspects of recognition, the suggested method attains a total precision of about 85.51 percent.
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