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Uncertainty Assessment of Hyperspectral Image Classification: Deep Learning vs. Random Forest

机译:高光谱图像分类的不确定性评估:深度学习与随机森林

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Uncertainty assessment techniques have been extensively applied as an estimate of accuracy to compensate for weaknesses with traditional approaches. Traditional approaches to mapping accuracy assessment have been based on a confusion matrix, and hence are not only dependent on the availability of test data but also incapable of capturing the spatial variation in classification error. Here, we apply and compare two uncertainty assessment techniques that do not rely on test data availability and enable the spatial characterisation of classification accuracy before the validation phase, promoting the assessment of error propagation within the classified imagery products. We compared the performance of emerging deep neural network (DNN) with the popular random forest (RF) technique. Uncertainty assessment was implemented by calculating the Shannon entropy of class probabilities predicted by DNN and RF for every pixel. The classification uncertainties of DNN and RF were quantified for two different hyperspectral image datasets—Salinas and Indian Pines. We then compared the uncertainty against the classification accuracy of the techniques represented by a modified root mean square error (RMSE). The results indicate that considering modified RMSE values for various sample sizes of both datasets, the derived entropy based on the DNN algorithm is a better estimate of classification accuracy and hence provides a superior uncertainty estimate at the pixel level.
机译:不确定性评估技术已被广泛用作准确性的估计,以弥补传统方法的不足。映射准确性评估的传统方法基于混淆矩阵,因此不仅取决于测试数据的可用性,而且无法捕获分类误差的空间变化。在这里,我们应用并比较了两种不依赖于测试数据可用性的不确定性评估技术,这些技术可以在验证阶段之前对分类精度进行空间表征,从而促进对分类图像产品内误差传播的评估。我们将新兴的深度神经网络(DNN)与流行的随机森林(RF)技术的性能进行了比较。通过计算DNN和RF预测的每个像素的类概率的Shannon熵来实现不确定性评估。对两个不同的高光谱图像数据集(Salinas和Indian Pines)量化了DNN和RF的分类不确定性。然后,我们将不确定性与修正的均方根误差(RMSE)代表的技术的分类精度进行了比较。结果表明,考虑到两个数据集的各种样本大小的修改后的RMSE值,基于DNN算法得出的熵是对分类精度的更好估计,因此在像素级别提供了更好的不确定性估计。

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