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Performance improvement in satellite image classification using adaptive supervised multi-resolution approach

机译:采用自适应监督多分辨率方法的卫星图像分类的性能改进

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摘要

Multispectral satellite images have a few straps, which have a lower determination and tight data. The purpose is to increase the external and spectral data of satellite images by utilizing high demand intelligence in a mix of force shadow immersion using Multi-resolution 3D modeling classification approach tracked for this work acceptance. The proposed 3D-based Adaptive Supervised Multi-Resolution (ASMR) method that automatically classifies different regions of space-time detection of remote images. Firstly, a 3D central multispectral and multi-volatile remote sensor is designed to compile data structure. Secondly, 3D multi-resolution framework with the acceptance under purified parameters tracking aims at creating 3D region models and learning spatiotemporal attribute representations. Connected parameters are being monitored to evaluate the performance of a 3D compatible multi-resolution project: Root stands for quadratic error, correlation coefficient, structural similarity index measure, and spectral mean relative error. The generated information uses more arranged knowledge to reduce the number of satellite images used to be used by independent band component evolutionary bias. The performance of the proposed method has been validated by simulation using Matlab software. As compared to the traditional 3D layout of the 3D image classification, the proposed solution achieves 97.72% accuracy, 98.25% sensitivity and 94.02% specificity.
机译:多光谱卫星图像具有少量带,具有较低的确定和紧密数据。目的是通过利用用于该工作验收的多分辨率3D建模分类方法,通过利用力阴影浸没的混合中的高需求智能来增加卫星图像的外部和光谱数据。所提出的基于3D的自适应监督多分辨率(ASMR)方法,可自动对远程图像的时空检测的不同区域进行分类。首先,设计3D中央光谱和多波动远程传感器旨在编译数据结构。其次,3D多分辨率框架与纯化参数的验收跟踪,旨在创建3D区域模型和学习时空属性表示。正在监视连接的参数以评估3D兼容多分辨率项目的性能:根代表二次误差,相关系数,结构相似度指标测量和光谱均值相对误差。所生成的信息使用更布置的知识来减少用于由独立频带分量进化偏差使用的卫星图像的数量。通过MATLAB软件的仿真验证了所提出的方法的性能。与3D图像分类的传统3D布局相比,所提出的解决方案的精度为97.72%,灵敏度为97.72%和94.02%的特异性。

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