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An Elephant Detection System to Prevent Human-Elephant Conflict and Tracking of Elephant Using Deep Learning

机译:大象检测系统,以防止人力大象冲突和追踪大象的深入学习

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Human settlement is spreading to forest boundary areas because of the population growth, it triggers disputes between elephants and humans, leading to the loss of property and life. Continuous monitoring and tracking of elephants are difficult due to their large size and movement. Therefore, large-scale for real-time detection and alert of elephant intrusion into human settlements, monitoring is needed. Many methods had been implemented for the elephant’s intrusion detection and warning systems. Wildlife conservation and the management of human-elephant conflict require a cost-effective method of monitoring elephant behavior. In this paper, a method for the identification of the elephant as an object using image processing is proposed. The major aim of the study is to minimize the human-elephant conflict in the forest border areas and the conservation of elephants from human activities as well as protect human lives from elephant attacks. We used a data set containing elephants and we developed an approach to distinguish elephants and other animals. We used the Convolutional Neural Network and achieved a maximum accuracy of 94 percent. The proposed method outperformed existing approaches and robustly and accurately detected elephants. It thus can form the basis for a future automated early warning system for elephants.
机译:由于人口增长,人类沉降正在蔓延到森林边界领域,它触发了大象和人类之间的纠纷,导致财产和生活的丧失。由于其大尺寸和运动,大象的持续监测和跟踪很困难。因此,需要大规模的实时检测和大象侵入到人类住区的警报,需要监测。为大象的入侵检测和警告系统实施了许多方法。野生动物保护和人大象冲突的管理需要一种经济高效的监测大象行为的方法。在本文中,提出了一种用于使用图像处理的物体识别大象的方法。该研究的主要目的是最大限度地减少森林边界地区的人大象冲突以及从人类活动中保护大象,并保护人类生活免受大象攻击。我们使用了包含大象的数据集,我们开发了一种区分大象和其他动物的方法。我们使用了卷积神经网络,实现了94%的最高精度。所提出的方法优于现有的现有方法和鲁棒性和精确地检测到的大象。因此,可以为大象的未来自动预警系统构成基础。

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