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Supervised Self-Organizing Map with classification uncertainty

机译:具有分类不确定性的监督自组织图

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The sensitivity and reliability of the classification output is an important subject for image classification. Classification accuracy in an inference process is always less than a desired accuracy in the actual classification process, thus this marginalized difference is considered as an element of uncertainty in the classification results. Failure to recognize uncertainty may lead to erroneous and misleading interpretations. Therefore, this research aims to quantify the uncertainty of the image classification. The Supervised Self-Organizing Map (SSOM) based on the neural network classification, which is a robust approach and improved image classification accuracy, with the synthetic dataset is used to evaluate the classification uncertainty. Monte Carlo simulation technique is applied to assess the reliability of the classification output by focusing on the uncertainty associated with the input data, training data, and the classifier. The results indicates that increasing the levels of noise have an extensive influence on the classification accuracy. SSOM with different sequences of training data produces the variation of classification accuracy. The minimum number of competitive layer neuron (NET) should correspond to the number of land cover diversities. Initial learning rate (LR) value depends on diversity of study area and the complexity of the input data. SSOM is likely to produce low accuracy and high uncertainty in areas of heterogeneity and large diversity. These results enhance the conceptual understanding of the uncertainty in classification accuracy and the results can also be a guideline to configure appropriate configuration of SSOM to improve classification result.
机译:分类输出的灵敏度和可靠性是图像分类的重要课题。推理过程中的分类精度始终小于实际分类过程中的所需精度,因此,这种边缘化差异被视为分类结果不确定性的一个要素。不认识不确定性可能导致错误和误导性的解释。因此,本研究旨在量化图像分类的不确定性。基于神经网络分类的监督自组织图(SSOM)是一种鲁棒的方法,具有改进的图像分类精度,并使用合成数据集来评估分类的不确定性。蒙特卡罗模拟技术通过关注与输入数据,训练数据和分类器相关的不确定性,被用于评估分类输出的可靠性。结果表明,增加噪声水平对分类精度有广泛的影响。具有不同训练数据序列的SSOM会产生分类准确性的变化。竞争层神经元(NET)的最小数量应与土地覆盖多样性的数量相对应。初始学习率(LR)值取决于研究区域的多样性和输入数据的复杂性。 SSOM在异质性和多样性大的地区可能会产生较低的准确性和较高的不确定性。这些结果增强了对分类准确性不确定性的概念理解,并且该结果也可以作为配置SSOM适当配置以改善分类结果的指南。

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