基于无人机的海豚监测与群体规模估算自动化非侵入系统

G. Dimauro, Lorenzo Simone, R. Carlucci, C. Fanizza, Nunzia Lomonte, R. Maglietta
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摘要

无人驾驶飞行器(uav)已广泛应用于海洋和陆地野生动物的监测研究中。无人机的主要优点是操作灵活性和低成本。在过去的几年里,保护和保护塔兰托湾(北爱奥尼亚海,地中海中东部)鲸类动物种群的需求变得越来越重要,无人机视频分析系统满足了这一需求。特别是海豚,它们可能受到人类活动的潜在伤害,在估计群体规模和丰度方面,可以从使用和应用自动系统中获益良多。本研究的目的是开发一种自动化的非侵入性系统,用于分析无人机获取的视频,用于估计鲸类动物的群体规模和丰度。一个像提议的自动化系统可以让我们立即估计船上遇到的鲸类动物的数量,并与负责的海洋哺乳动物观察员(MMO)的估计进行比较,或者当专家必须在实验室分析视频时,它将成为一个有用的支持系统。本文以塔兰托湾调查为例,将无人机视频分析系统应用于安装在无人机上的摄像机采集的视频中。使用了两种不同的机器学习模型,尽管存在一些局限性,但这两种训练模型都能够很好地解决任务。
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Automated and non-invasive UAV-based system for the monitoring and the group size estimation of dolphins
Unmanned Aerial Vehicles (UAVs or drones) have been extensively applied in monitoring studies to address marine and terrestrial wildlife animals. The main advantages of UAV s are their operational flexibility and low cost. In the last few years, the need to safeguard and protect the population of cetaceans in the Gulf of Taranto (Northern Ionian Sea, Central-eastern Mediterranean Sea) has grown in importance, and the UAVs video-analysis systems meet this need. In particular, dolphins, which can be potentially harmed by human activities in this area, could benefit a lot from the use and the application of automatic systems, in terms of estimation of group size and abundance. The goal of this study is to develop an automated non-invasive system for the analysis of videos acquired by UAV s, devoted to the estimation of cetaceans group size and abundance. An automated system like the proposed one would allow having an immediate estimate of the number of the encountered cetaceans, onboard the vessel, to be compared with the estimation made by the Marine Mammal Observer (MMO) in charge or it would be a useful support system for the expert when he has to analyze the video in the laboratory. In this paper, as a case of study, the UAV s video-analysis system has been applied on videos acquired by a camera mounted on a drone, during surveys in the Gulf of Taranto. Two different models of machine learning were used, and both the trained models are able to solve the task well albeit with some limitations.
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