利用机载高光谱热数据估算城市污染含量

J. George, J. Aravinth
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引用次数: 1

摘要

治理污染的最好办法是检测和控制污染。城市地区的主要污染物是石棉和气溶胶。本文介绍了一种利用高光谱数据检测某一区域污染物的技术。由于其丰富的光谱信息,非常微小的内容被识别。高光谱图像是由Telops的Hyper- Cam捕获的,其中包含热红外波段,用于创建陆地表面的温度图,从而根据不同的温度范围对不同的物体进行分类。可见光波段也被用来对图像进行分类,并计算每个类别下的面积百分比。为了评估每个分类器的准确性,计算了混淆矩阵,并确定支持向量机(SVM)分类器是除光谱角映射器(SAM)和光谱信息发散器(SID)之外的最佳分类器,准确率为94.89%。一个地区存在的气溶胶量是根据一个称为$PM_{10}$的因子来计算的,该因子给出了尺寸小于$10 \mu \ mathm {m}的颗粒浓度。利用PM_{10}$与大气反射率之间的关系,得到PM_{10}$的值在$34 \mu \ mathm {g}/\ mathm {m}^{3}\ mathm {a}\ mathm {n}\ mathm {d}66\mu \ mathm {g}/\ mathm {m}^{3}之间。它的水平高于$15 \mu \ mathm {g}/\ mathm {m}^{3}$,这是根据加拿大司法管辖区的安全值,因此有可能对人类健康产生有害影响。
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Estimating Pollution Contents in an Urban Area using Airborne Hyperspectral Thermal Data
The best remedy of pollution is its detection and control. The major pollutants in an urban area are asbestos and aerosol. This work introduces a technique to detect the pollutants in an area using hyperspectral data. Due to its enriched spectral information very minute contents are identified. The hyperspectral image is captured with the Telops' Hyper- Cam which contains thermal infrared bands which is used to create temperature map of that land surface thereby the different objects are classified according to different temperature ranges. The visible bands are also used to classify the image and the percentage of area under each class is calculated. To assess the accuracy of each classifier, confusion matrix is computed and identified that Support Vector Machine (SVM) classifier is the best other than Spectral Angle Mapper (SAM) and Spectral Information Divergence (SID) having accuracy of 94.89%. The amount of aerosol present in a locality is calculated with respect to a factor called $PM_{10}$ which gives the concentration of particles of dimension less than $10 \mu \mathrm {m}.$ Using the relation between $PM_{10}$ and atmospheric reflectance the value of $PM_{10}$ is obtained between $34 \mu \mathrm {g}/\mathrm {m}^{3}\mathrm {a}\mathrm {n}\mathrm {d}66\mu \mathrm {g}/\mathrm {m}^{3}.$ It's level is above $15 \mu \mathrm {g}/\mathrm {m}^{3}$which is the safe value according to Canadian jurisdiction so there is chance of hazardous health effects on human beings.
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