论文标题

遥感图像上的多标签分类

Multi-Label Classification on Remote-Sensing Images

论文作者

Singh, Aditya Kumar, Shankar, B. Uma

论文摘要

通过卫星摄像机获取有关地球表面大区域的信息,使我们看到的是站在地面上时所看到的要多得多。这有助于我们检测和监视诸如土地利用模式,大气条件,森林覆盖和许多未透露见名方面之类的区域的物理特征。所获得的图像不仅跟踪连续的自然现象,而且对于应对严重森林砍伐的全球挑战至关重要。亚马逊盆地每年占最大份额。适当的数据分析将有助于限制可持续健康氛围对生态系统和生物多样性的有害影响。该报告的目的是通过不同的机器学习和出色的深度学习模型将亚马逊雨林的卫星图像芯片标记为大气和各种土地覆盖或土地使用。评估是基于F2度量进行的,而对于损失函数,我们既具有Sigmoid跨膜片也具有SoftMax跨膜片。仅在使用预训练的成像网架构中提取功能后,将图像间接馈送给机器学习分类器。尽管对于深度学习模型,但通过转移学习使用了微调成像网的合奏。到目前为止,通过F2度量达到0.927,我们的最佳成绩是达到的。

Acquiring information on large areas on the earth's surface through satellite cameras allows us to see much more than we can see while standing on the ground. This assists us in detecting and monitoring the physical characteristics of an area like land-use patterns, atmospheric conditions, forest cover, and many unlisted aspects. The obtained images not only keep track of continuous natural phenomena but are also crucial in tackling the global challenge of severe deforestation. Among which Amazon basin accounts for the largest share every year. Proper data analysis would help limit detrimental effects on the ecosystem and biodiversity with a sustainable healthy atmosphere. This report aims to label the satellite image chips of the Amazon rainforest with atmospheric and various classes of land cover or land use through different machine learning and superior deep learning models. Evaluation is done based on the F2 metric, while for loss function, we have both sigmoid cross-entropy as well as softmax cross-entropy. Images are fed indirectly to the machine learning classifiers after only features are extracted using pre-trained ImageNet architectures. Whereas for deep learning models, ensembles of fine-tuned ImageNet pre-trained models are used via transfer learning. Our best score was achieved so far with the F2 metric is 0.927.

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