Applications of remote sensing and GIS techniques for identifying of the plastic waste from space: Evidence from Khulna city corporation in Bangladesh

IF 3.9 Q2 ENVIRONMENTAL SCIENCES
Md Nahid Ferdous , Mohammad Ismail Hossain , Mohammed Manik
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引用次数: 0

Abstract

Plastic waste poses a significant threat to the environment, public health, and aquatic life. Several methods are now under development in many studies to monitor plastic waste through earth observation satellites. These methods were successfully applied to monitor plastic litter and debris. Due to the special optical signature of plastic, it is easy to identify it in aquatic environments. But in the case of identifying plastic waste on land or in a terrestrial environment, it is very difficult as different types of land cover have their own special optical signature. Conducting field surveys could be a possible solution for monitoring plastic waste on land, but it’s costly and time-consuming. To tackle this problem, remote sensing-based observation can make a sustainable contribution. This study aims to identify plastic waste on land by the combination of Sentinel-2 imagery and two supervised classification algorithms: (1) maximum likelihood and (2) support vector classification. Two locations where plastic waste was recycled were considered for conducting this study by field observations. A total of 60 samples have been taken in this study, out of which 80% (48) have been taken as training samples and the remaining 20% (12) have been taken as testing samples, and the entire process was done using ArcGIS 10.8. This analysis revealed that algorithms used in this study successfully identify plastic waste on land, and between two algorithms, support vector classification achieves the highest accuracy (93%). Bands 6, 7, and 8 show higher spectral reflectance for plastic. The finding suggests that supervised algorithms can be used to identify plastic waste on land. Other algorithms, high-resolution satellite imagery, and a larger dataset are necessary to identify smaller plastic waste on land. This study will help policymakers and decision-makers at national and local levels to identify and management of plastic waste in a sustainable way.
遥感和地理信息系统技术在识别空间塑料废物方面的应用:来自孟加拉国库尔纳市公司的证据
塑料垃圾对环境、公众健康和水生生物构成重大威胁。目前,许多研究正在开发几种方法,通过地球观测卫星监测塑料废物。这些方法已成功地用于监测塑料垃圾和碎片。由于塑料具有特殊的光学特征,在水生环境中很容易识别。但在陆地或陆地环境中识别塑料垃圾的情况下,由于不同类型的土地覆盖具有各自特殊的光学特征,因此非常困难。进行实地调查可能是监测陆地上塑料垃圾的一种可能的解决方案,但它既昂贵又耗时。为了解决这一问题,基于遥感的观测可以做出可持续的贡献。本研究旨在结合Sentinel-2图像和两种监督分类算法:(1)最大似然和(2)支持向量分类,对陆地上的塑料垃圾进行识别。通过实地观察,考虑了回收塑料废物的两个地点进行这项研究。本研究共采集了60个样本,其中80%(48个)作为训练样本,其余20%(12个)作为测试样本,整个过程使用ArcGIS 10.8完成。分析表明,本研究使用的算法成功识别了陆地上的塑料垃圾,两种算法中,支持向量分类的准确率最高(93%)。6、7、8波段对塑料表现出较高的光谱反射率。这一发现表明,监督算法可以用来识别陆地上的塑料垃圾。其他算法、高分辨率卫星图像和更大的数据集是识别陆地上较小的塑料垃圾所必需的。这项研究将帮助国家和地方各级的政策制定者和决策者以可持续的方式识别和管理塑料废物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
City and Environment Interactions
City and Environment Interactions Social Sciences-Urban Studies
CiteScore
6.00
自引率
3.00%
发文量
15
审稿时长
27 days
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