Aziz Gouhar, Minallah Nasru, Saeed Aamir, Frnda Jaroslav, Khan Waleed
Department of Computer Science and Information Technology, University of Engineering and Technology, Peshawar, Pakistan.
National Centre for Big Data and Cloud Computing, University of Engineering and Technology, Peshawar, Pakistan.
Sci Rep. 2024 Jan 2;14(1):69. doi: 10.1038/s41598-023-50863-1.
Pakistan falls significantly below the recommended forest coverage level of 20 to 30 percent of total area, with less than 6 percent of its land under forest cover. This deficiency is primarily attributed to illicit deforestation for wood and charcoal, coupled with a failure to embrace advanced techniques for forest estimation, monitoring, and supervision. Remote sensing techniques leveraging Sentinel-2 satellite images were employed. Both single-layer stacked images and temporal layer stacked images from various dates were utilized for forest classification. The application of an artificial neural network (ANN) supervised classification algorithm yielded notable results. Using a single-layer stacked image from Sentinel-2, an impressive 91.37% training overall accuracy and 0.865 kappa coefficient were achieved, along with 93.77% testing overall accuracy and a 0.902 kappa coefficient. Furthermore, the temporal layer stacked image approach demonstrated even better results. This method yielded 98.07% overall training accuracy, 97.75% overall testing accuracy, and kappa coefficients of 0.970 and 0.965, respectively. The random forest (RF) algorithm, when applied, achieved 99.12% overall training accuracy, 92.90% testing accuracy, and kappa coefficients of 0.986 and 0.882. Notably, with the temporal layer stacked image of the Sentinel-2 satellite, the RF algorithm reached exceptional performance with 99.79% training accuracy, 96.98% validation accuracy, and kappa coefficients of 0.996 and 0.954. In terms of forest cover estimation, the ANN algorithm identified 31.07% total forest coverage in the District Abbottabad region. In comparison, the RF algorithm recorded a slightly higher 31.17% of the total forested area. This research highlights the potential of advanced remote sensing techniques and machine learning algorithms in improving forest cover assessment and monitoring strategies.
巴基斯坦的森林覆盖率远低于建议的占总面积20%至30%的水平,其森林覆盖面积不到国土面积的6%。这种不足主要归因于非法砍伐树木用于木材和木炭生产,以及未能采用先进的森林估算、监测和监管技术。研究采用了利用哨兵2号卫星图像的遥感技术。来自不同日期的单层堆叠图像和时间层堆叠图像都被用于森林分类。人工神经网络(ANN)监督分类算法的应用产生了显著成果。使用哨兵2号的单层堆叠图像,训练总体准确率达到了令人印象深刻的91.37%,卡帕系数为0.865,测试总体准确率为93.77%,卡帕系数为0.902。此外,时间层堆叠图像方法显示出更好的结果。该方法的训练总体准确率为98.07%,测试总体准确率为97.75%,卡帕系数分别为0.970和0.965。应用随机森林(RF)算法时,训练总体准确率达到99.12%,测试准确率为92.90%,卡帕系数为0.986和0.882。值得注意的是,对于哨兵2号卫星的时间层堆叠图像,RF算法表现卓越,训练准确率为99.79%,验证准确率为96.98%,卡帕系数为0.996和0.954。在森林覆盖面积估算方面,ANN算法确定阿伯塔巴德地区的森林覆盖总面积为31.07%。相比之下,RF算法记录的森林总面积略高,为31.17%。这项研究突出了先进遥感技术和机器学习算法在改进森林覆盖评估和监测策略方面的潜力。