Land Use and Land Cover (LULC) Assessment within the Batanes Protected Landscapes and Seascapes

Nova Doyog, Roscinto Ian Lumbres, Lynn Talkasen, Deign Frolley Soriano
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Abstract

Declared protected areas have ecologically important landscapes that must be conserved and protected. Status of protected areas could be monitored through land use and land cover (LULC) assessments. LULC offers baseline data for integrated land use planning and improvement of existing policies are therefore necessary to be conducted. This study was conducted to monitor the existing LULC of six islands within the Batanes Protected Landscapes and Seascapes (BPLS) through a machine learning (ML)-based random forest (RF) classifier using multi-sourced data such as Landsat imageries’ surface reflectance (SR), Landsat-derived land surface temperature (LST), and global ecosystem dynamic investigation (GEDI)-derived height (Ht) metrics and to determine the effects of the LST and Ht metrics to LULC classification. Four layer stacked images with different features were analyzed – including SR, SR-LST, SR-Ht, and SR-LST-Ht. The result of the LULC classification showed an accuracy based on Macro F1-score and Kappa (K) of 0.81 and 0.83, 0.83and 0.86, 0.86 and 0.89, and 0.93 and 0.94, for SR, SR-LST, SR-Ht, and SR-LST-Ht, respectively. When compared to the existing global-scale LULC, this study has higher accuracy than the GLAD and ESRI products, which have Macro F1-scores and K-values of 0.73 and 0.71, and 0.59 and 0.64, respectively. To conclude, the inclusion of LST and Ht information in addition to SR data in LULC classification can improve the accuracy by up to 12% and 11% based on Macro F1-score and K,respectively. The result of this study can serve as a reference for achieving improved and reliable LULC information that is necessary for monitoring fluctuations of the global earth’s resources and comprehensive LULC planning. In addition, the technique used in this study can serve as a reference in generating reliable LULC information that can aid in the sustainable implementation of policies, rules, and regulations intended for declared protected areas like BPLS.
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巴丹岛受保护景观和海景的土地利用和土地覆盖(LULC)评估
已宣布的保护区具有重要的生态景观,必须加以养护和保护。可以通过土地利用和土地覆盖(LULC)评估来监测保护区的状况。土地用途综合规划提供了基线数据,因此有必要进行综合土地用途规划和改善现有政策。本研究利用Landsat影像的地表反射率(SR)、Landsat衍生的地表温度(LST)和全球生态系统动态调查(GEDI)衍生的高度(Ht)等多源数据,通过基于机器学习(ML)的随机森林(RF)分类器,对巴丹岛受保护景观和景观(BPLS)内6个岛屿的现有LULC进行了监测,并确定了LST和Ht指标对LULC分类的影响。分析了SR、SR- lst、SR- ht和SR- lst - ht四种不同特征的层叠加图像。基于Macro f1评分和Kappa (K)的LULC分类结果显示,SR、SR- lst、SR- ht和SR- lst - ht的准确率分别为0.81和0.83、0.83和0.86、0.86和0.89、0.93和0.94。与现有的全球尺度LULC相比,本研究的精度高于GLAD和ESRI产品,后者的Macro f1得分和k值分别为0.73和0.71,0.59和0.64。综上所述,在SR数据基础上加入LST和Ht信息用于LULC分类,基于Macro F1-score和K,准确率分别提高了12%和11%。研究结果可为获得更完善、更可靠的土地利用成本信息提供参考,为全球地球资源波动监测和土地利用成本综合规划提供必要依据。此外,本研究中使用的技术可以作为生成可靠的LULC信息的参考,这些信息可以帮助可持续地实施针对BPLS等已宣布保护区的政策、规则和法规。
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