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BINARY HYPERSPECTRAL CHANGE DETECTION BASED ON 3D CONVOLUTION DEEP LEARNING

机译:基于3D卷积深度学习的二元超光谱改变检测

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Timely and accurate change detection of Earth’s surface features is extremely important for understanding relationships and interactions between human and natural phenomena to promote better decision making. The bi-temporal hyperspectral imagery has a high potential for the detection of surface changes. However, the extraction of changes from bi-temporal hyperspectral imagery due to special content of data, and environment conditions (atmospheric condition), change into challenging task. To this end, this research proposed a change detection framework based on deep learning using bi-temporal hyperspectral imagery. The proposed framework is applied in two main steps: (1) predict phase that the change areas highlighted from no-change areas using image differencing algorithm (ID), (2) decision phase that it decides for detecting change pixels based on 3D convolution neural network (CNN). The efficiency of the presented method is evaluated using Hyperion multi-temporal hyperspectral imagery. To evaluate the performance of the proposed method, two bi-temporal hyperspectral Hyperion with a variety of land cover classes were used. The results show that the proposed method has high accuracy and low false alarms rate: overall accuracy is more than 95%, and the kappa coefficient is greater than 0.9 and the miss-detection is lower than 10% and the false rate is lower than 4%.
机译:及时准确地改变地球表面特征对于了解人类和自然现象之间的关系和相互作用来说,对促进更好的决策来说非常重要。双时效高光谱图像具有高潜力,用于检测表面变化。然而,由于数据的特殊内容和环境条件(大气条件)而言,从双颞高光谱图像提取改变,变为具有挑战性的任务。为此,本研究提出了一种基于使用双时效高光谱图像的深度学习的变化检测框架。所提出的框架应用于两个主要步骤:(1)预测使用图像差异算法(ID),(2)决定阶段从无变化区域突出显示的变化区域,它决定基于3D卷积神经检测改变像素的判定阶段网络(CNN)。使用Hyperion多时间超光谱图像评估所提出的方法的效率。为了评估所提出的方法的性能,使用了两种具有各种陆地覆盖类的双颞高光谱高光度。结果表明,该方法具有高精度和低误报率:总体精度大于95%,kappa系数大于0.9,错过检测低于10%,假速率低于4 %。

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