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Exploring Artificial Intelligence for Applications of Drones in Forest Ecology and Management

Forest Ecology and Management(2024)

Univ Nat Resources & Life Sci | Univ Appl Sci St Poelten | Univ Vienna

Cited 31|Views33
Abstract
This paper highlights the significance of Artificial Intelligence (AI) in the realm of drone applications in forestry. Drones have revolutionized various forest operations, and their role in mapping, monitoring, and inventory procedures is explored comprehensively. Leveraging advanced imaging technologies and data processing techniques, drones enable real-time tracking of changes in forested landscapes, facilitating effective monitoring of threats such as fire outbreaks and pest infestations. They expedite forest inventory by swiftly surveying large areas, providing precise data on tree species identification, size estimation, and health assessment, thus supporting informed decision-making and sustainable forest management practices. Moreover, drones contribute to tree planting, pruning, and harvesting, while monitoring reforestation efforts in real-time. Wildlife monitoring is also enhanced, aiding in the identification of conservation concerns and informing targeted conservation strategies. Drones offer a safer and more efficient alternative in search and rescue operations within dense forests, reducing response time and improving outcomes. Additionally, drones equipped with thermal cameras enable early detection of wildfires, enabling timely response, mitigation, and preservation efforts. The integration of AI and drones holds immense potential for enhancing forestry practices and contributing to sustainable land management. In the future explainable AI (XAI) improves trust and safety by providing transparency in decision-making, aiding in liability issues, and enabling precise operations. XAI facilitates better environmental monitoring and impact analysis, contributing to efficient forest management and preservation efforts. If a drone's AI can explain its actions, it will be easier to understand why it chose a particular path or action, which could inform safety procedures and improvements.
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Key words
Artificial intelligence,Machine learning,Drones,Unmanned aerial vehicles,Forestry,Forest ecology
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Chat Paper

要点】:本文突出了人工智能在林业无人机应用领域的重要性,全面探讨了无人机在森林制图、监测和清查程序中的角色,并强调了其对森林火灾、害虫入侵等威胁的有效监测能力,以及支持可持续森林管理决策和实践的无人机清查和数据收集优势。

方法】:论文通过利用先进的成像技术和数据处理技术,全面探索了人工智能在无人机林业应用中的作用。

实验】:实验使用先进成像技术和数据处理技术,通过无人机实时跟踪森林景观变化,有效监测森林火灾和害虫入侵等威胁;通过快速调查大面积地区,快速进行森林清查,精确获取树种鉴定、大小估计和健康评估数据,支持可持续的森林管理实践;并通过无人机进行树木种植、修剪和收获,实时监测再造林努力。同时,无人机在野生动物监测方面也得到了增强,有助于识别保护关切并制定有针对性的保护策略。在密林搜寻和救援操作中,无人机提供了一种更安全、更高效的选择,减少了响应时间并提高了结果。此外,装备有热像仪的无人机可以早期发现森林火灾,及时进行应对、减轻和保护努力。未来,可解释人工智能(XAI)通过提供决策透明度,改善信任和安全,有助于责任问题,并实现精确操作。XAI促进了更好的环境监测和影响分析,为有效的森林管理和保护努力做出贡献。如果无人机的AI能够解释其行为,那么更容易理解其为何选择特定路径或行动,这可以通知安全程序和改进。