基于遥感数据和神经网络技术的森林变化分类

A. A. Mehdawi, Baharin bin Ahmad
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引用次数: 6

摘要

森林是一种重要的资源,在维持生态平衡和环境建设中起着至关重要的作用。森林资源的过度利用导致了森林资源的枯竭。森林覆盖(侵蚀)变化因其对碳循环的促进作用而成为全球关注的问题。本文将重点介绍神经网络等人工智能在遥感中的应用,以评估和监测森林覆盖(侵蚀)变化。然而,在遥感光谱分辨率方面的研究进展对生态学家来说是可行的,主要是通过直接遥感来研究生物多样性的某些方面。本研究将利用QuickBird等全球和区域尺度的多光谱遥感数据来监测近几十年来森林覆盖(侵蚀)的变化。在全球和区域尺度上监测森林覆盖的变化有助于减少估算森林侵蚀造成的温室气体排放的不确定性。在马来西亚等发展中国家,遥感与人工智能技术相结合将作为一种潜在的工具,用于区域和全球范围的森林侵蚀分类;这项研究将主要帮助许多部门监测和识别森林入侵。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of forest change by integration of remote sensing data with Neural Network techniques
Forest is a major resource and play vital role in maintaining the ecological balance and environmental setup. Over utilization of forest resources has resulted in the depletion. The changes in forest cover (encroachment) are the matter of global concern due to its ability of promoting role in carbon cycle. This paper will focus into the application of artificial intelligence used in remote sensing such as Neural Network worldwide for assessing and monitoring the changes in forest cover (encroachment). However, advances in the spectral resolutions of sensors are available for ecologist which mainly feasible, to study the certain aspects of biological diversity through direct remote sensing. Global and regional scale of multispectral remote sensed data such as QuickBird, will be used in this study for monitoring the changes in forest cover (encroachment) over the last few decades. Monitoring the changes in forest cover at global and regional scale can contribute to reducing the uncertainties in estimates of emissions of green house gases from forest encroachment. Remote sensing coupled with one of artificial intelligence techniques will use as a potential tool, for classification of the forest encroachment at regional as well as global scale in developing countries such as Malaysia; mainly this research will assist many sectors to monitoring and identify forest encroachment.
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