Kwenda Clopas, Gwetu Mandlenkosi, Fonou-Dombeu Jean Vincent
School of Mathematics, Statistics and Computer Science, University of KwaZulu Natal, Pietermaritzburg 3209, South Africa.
Department of Industrial Engineering, University of Stellenbosch, Stellenbosch 7600, South Africa.
J Imaging. 2024 May 29;10(6):132. doi: 10.3390/jimaging10060132.
Forests play a pivotal role in mitigating climate change as well as contributing to the socio-economic activities of many countries. Therefore, it is of paramount importance to monitor forest cover. Traditional machine learning classifiers for segmenting images lack the ability to extract features such as the spatial relationship between pixels and texture, resulting in subpar segmentation results when used alone. To address this limitation, this study proposed a novel hybrid approach that combines deep neural networks and machine learning algorithms to segment an aerial satellite image into forest and non-forest regions. Aerial satellite forest image features were first extracted by two deep neural network models, namely, VGG16 and ResNet50. The resulting features are subsequently used by five machine learning classifiers including Random Forest (RF), Linear Support Vector Machines (LSVM), k-nearest neighbor (kNN), Linear Discriminant Analysis (LDA), and Gaussian Naive Bayes (GNB) to perform the final segmentation. The aerial satellite forest images were obtained from a deep globe challenge dataset. The performance of the proposed model was evaluated using metrics such as Accuracy, Jaccard score index, and Root Mean Square Error (RMSE). The experimental results revealed that the RF model achieved the best segmentation results with accuracy, Jaccard score, and RMSE of 94%, 0.913 and 0.245, respectively; followed by LSVM with accuracy, Jaccard score and RMSE of 89%, 0.876, 0.332, respectively. The LDA took the third position with accuracy, Jaccard score, and RMSE of 88%, 0.834, and 0.351, respectively, followed by GNB with accuracy, Jaccard score, and RMSE of 88%, 0.837, and 0.353, respectively. The kNN occupied the last position with accuracy, Jaccard score, and RMSE of 83%, 0.790, and 0.408, respectively. The experimental results also revealed that the proposed model has significantly improved the performance of the RF, LSVM, LDA, GNB and kNN models, compared to their performance when used to segment the images alone. Furthermore, the results showed that the proposed model outperformed other models from related studies, thereby, attesting its superior segmentation capability.
森林在缓解气候变化以及促进许多国家的社会经济活动方面发挥着关键作用。因此,监测森林覆盖情况至关重要。用于分割图像的传统机器学习分类器缺乏提取像素之间空间关系和纹理等特征的能力,单独使用时分割结果欠佳。为解决这一局限性,本研究提出了一种新颖的混合方法,将深度神经网络和机器学习算法相结合,将航空卫星图像分割为森林和非森林区域。首先通过两个深度神经网络模型,即VGG16和ResNet50,提取航空卫星森林图像特征。随后,包括随机森林(RF)、线性支持向量机(LSVM)、k近邻(kNN)、线性判别分析(LDA)和高斯朴素贝叶斯(GNB)在内的五个机器学习分类器使用所得特征进行最终分割。航空卫星森林图像取自深度地球挑战数据集。使用准确率、杰卡德评分指数和均方根误差(RMSE)等指标对所提模型的性能进行评估。实验结果表明,RF模型取得了最佳分割结果,准确率、杰卡德评分和RMSE分别为94%、0.913和0.245;其次是LSVM,准确率、杰卡德评分和RMSE分别为89%、0.876和0.332。LDA位居第三,准确率、杰卡德评分和RMSE分别为88%、0.834和0.351,随后是GNB,准确率、杰卡德评分和RMSE分别为88%、0.837和0.353。kNN排在最后,准确率、杰卡德评分和RMSE分别为83%、0.790和0.408。实验结果还表明,与单独用于分割图像时的性能相比,所提模型显著提高了RF、LSVM、LDA、GNB和kNN模型的性能。此外,结果表明所提模型优于相关研究中的其他模型,从而证明了其卓越的分割能力。