Department of Computer Engineering and Information Security, International Information Technology University, Almaty 050040, Kazakhstan.
Department of Computer Science and Engineering, University of Bridgeport, Bridgeport, CT 06604, USA.
Sensors (Basel). 2021 Jun 28;21(13):4431. doi: 10.3390/s21134431.
Remote sensing technologies have been widely used in the contexts of land cover and land use. The image classification algorithms used in remote sensing are of paramount importance since the reliability of the result from remote sensing depends heavily on the classification accuracy. Parametric classifiers based on traditional statistics have successfully been used in remote sensing classification, but the accuracy is greatly impacted and rather constrained by the statistical distribution of the sensing data. To eliminate those constraints, new variants of support vector machine (SVM) are introduced. In this paper, we propose and implement land use classification based on improved SVM-enabled radial basis function (RBF) and SVM-Linear for image sensing. The proposed variants are applied for the cross-validation to determine how the optimization of parameters can affect the accuracy. The accuracy assessment includes both training and test sets, addressing the problems of overfitting and underfitting. Furthermore, it is not trivial to determine the generalization problem merely based on a training dataset. Thus, the improved SVM-RBF and SVM-Linear also demonstrate the outstanding generalization performance. The proposed SVM-RBF and SVM-Linear variants have been compared with the traditional algorithms (Maximum Likelihood Classifier (MLC) and Minimum Distance Classifier (MDC)), which are highly compatible with remote sensing images. Furthermore, the MLC and MDC are mathematically modeled and characterized with new features. Also, we compared the proposed improved SVM-RBF and SVM-Linear with the current state-of-the-art algorithms. Based on the results, it is confirmed that proposed variants have higher overall accuracy, reliability, and fault-tolerance than traditional as well as latest state-of-the-art algorithms.
遥感技术已广泛应用于土地覆盖和土地利用领域。遥感中使用的图像分类算法至关重要,因为遥感结果的可靠性在很大程度上取决于分类精度。基于传统统计学的参数分类器已成功应用于遥感分类,但精度受到传感数据统计分布的极大影响和限制。为了消除这些限制,引入了支持向量机 (SVM) 的新变体。在本文中,我们提出并实现了基于改进的支持向量机支持的径向基函数 (RBF) 和 SVM-Linear 的土地利用分类,用于图像传感。所提出的变体用于交叉验证,以确定参数优化如何影响精度。准确性评估包括训练集和测试集,解决了过拟合和欠拟合的问题。此外,仅基于训练数据集确定泛化问题并不容易。因此,改进的 SVM-RBF 和 SVM-Linear 也展示了出色的泛化性能。与传统算法(最大似然分类器 (MLC) 和最小距离分类器 (MDC))相比,所提出的 SVM-RBF 和 SVM-Linear 变体具有高度的兼容性,并且可以对遥感图像进行数学建模和特征描述。此外,我们还将改进的 SVM-RBF 和 SVM-Linear 与当前最先进的算法进行了比较。根据结果证实,所提出的变体比传统和最新的最先进算法具有更高的整体准确性、可靠性和容错性。