Application of remote sensing image processing based on artificial intelligence in landscape pattern analysis

IF 2.8 4区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES
Qi Zhang
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引用次数: 0

Abstract

The spatial arrangement of various land cover types within a landscape is referred to as the Landscape Pattern (LSP). An essential component of landscape ecology, LSP examination is significant for a variety of causes, like species conservation, sustainable development, environmental monitoring, landscape planning, and management of accepted resources. The development of Remote Sensing (RS) images permits urban planners to additional systematically and economically. 0 identify the land use of a specified area on a slighter time scale. The objective of this study is to build up an artificial intelligence (AI)-based RS image processing performance for LSP. This study, proposed a novel refined flamingo search-dynamic recurrent neural network (RFS-DRNN) to analyze the LSP. RS image data were gathered from landscape characteristics. The Discrete Wavelet Transform (DWT) utilizes pre-processed data to eliminate noise, though maintenance is important distinctiveness. Convolutional Neural Network (CNN) using extracted features from image data. RFS could be used to progress the constraint of a DRNN model that is used to analyze patterns in the landscape. It can be used to regulate an RNN's hyper parameters to enhance its ability to recognize and categorize landscape features. The results showed that the proposed method is effective at analyzing LSPs. The significance indicates that the proposed method has achieved superior performance in including accuracy [98.90%], precision [94.82%], recall [93.75%], and F1-score [95.29%]. The hierarchical land-cover mapping reveal process creates thorough LSP analysis possible by using satellite images and sophisticated algorithms. High training accuracy and decreasing training loss indicate effective model learning and generalization for landscape analysis. The execution times at the end highlight the important it is to maximize processing methods and computational capacity to build quick decisions while analyzing LSP.

Abstract Image

基于人工智能的遥感图像处理在景观模式分析中的应用
景观中各种土地覆被类型的空间排列被称为景观格局(LSP)。作为景观生态学的一个重要组成部分,景观格局的研究对于物种保护、可持续发展、环境监测、景观规划和公认资源的管理等各种原因都具有重要意义。遥感(RS)图像的发展使城市规划者能够更系统、更经济地。0 在较小的时间尺度上确定特定区域的土地利用情况。本研究的目标是为 LSP 建立基于人工智能(AI)的 RS 图像处理性能。本研究提出了一种新颖的精炼火烈鸟搜索-动态递归神经网络(RFS-DRNN)来分析土地规划。根据景观特征收集 RS 图像数据。离散小波变换(DWT)利用预处理数据来消除噪音,但保持重要的独特性。卷积神经网络(CNN)使用从图像数据中提取的特征。RFS 可用于改进 DRNN 模型的约束,该模型用于分析景观中的模式。它可用于调节 RNN 的超参数,以增强其识别和分类景观特征的能力。结果表明,所提出的方法能有效分析 LSP。显著性表明,所提出的方法在准确率[98.90%]、精确率[94.82%]、召回率[93.75%]和 F1 分数[95.29%]等方面都取得了优异的表现。分层土地覆被制图揭示过程利用卫星图像和复杂的算法实现了全面的土地覆被分析。较高的训练精度和较小的训练损失表明模型学习和泛化在景观分析中非常有效。最后的执行时间凸显了最大限度地利用处理方法和计算能力在分析 LSP 时快速做出决策的重要性。
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来源期刊
Environmental Earth Sciences
Environmental Earth Sciences 环境科学-地球科学综合
CiteScore
5.10
自引率
3.60%
发文量
494
审稿时长
8.3 months
期刊介绍: Environmental Earth Sciences is an international multidisciplinary journal concerned with all aspects of interaction between humans, natural resources, ecosystems, special climates or unique geographic zones, and the earth: Water and soil contamination caused by waste management and disposal practices Environmental problems associated with transportation by land, air, or water Geological processes that may impact biosystems or humans Man-made or naturally occurring geological or hydrological hazards Environmental problems associated with the recovery of materials from the earth Environmental problems caused by extraction of minerals, coal, and ores, as well as oil and gas, water and alternative energy sources Environmental impacts of exploration and recultivation – Environmental impacts of hazardous materials Management of environmental data and information in data banks and information systems Dissemination of knowledge on techniques, methods, approaches and experiences to improve and remediate the environment In pursuit of these topics, the geoscientific disciplines are invited to contribute their knowledge and experience. Major disciplines include: hydrogeology, hydrochemistry, geochemistry, geophysics, engineering geology, remediation science, natural resources management, environmental climatology and biota, environmental geography, soil science and geomicrobiology.
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