Clouds and snow have similar spectral features in the visible and near-infrared (VNIR) range and are thus difficult to distinguish from each other in high resolution VNIR images. We address this issue by introducing a shortwave-infrared (SWIR) band where clouds are highly reflective, and snow is absorptive. As SWIR is typically of a lower resolution compared to VNIR, this study proposes a multiresolution fully convolutional neural network (FCN) that can effectively detect clouds and snow in VNIR images. We fuse the multiresolution bands within a deep FCN and perform semantic segmentation at the higher, VNIR resolution. Such a fusion-based classifier, trained in an end-to-end manner, achieved 94.31% overall accuracy and an F1 score of 97.67% for clouds on Resourcesat-2 data captured over the state of Uttarakhand, India. These scores were found to be 30% higher than a Random Forest classifier, and 10% higher than a standalone single-resolution FCN. Apart from being useful for cloud detection purposes, the study also highlights the potential of convolutional neural networks for multi-sensor fusion problems.
翻译:在可见和近红外图像中,云和雪在可见和近红外(VNIR)范围内具有相似的光谱特征,因此很难在高分辨率VNIR图像中彼此区别。我们通过引入短波红外(SWIR)波段来解决这个问题,因为云的反射度高,而积雪是吸收的。由于SWIR通常与VNIR相比分辨率较低,因此,本研究报告建议建立一个多分辨率完全共振神经网络,能够有效探测VNIR图像中的云和雪。我们把多分辨率带装在深层FCN内,在高分辨率VNIR分辨率上进行语义分解。这种基于聚变聚的分类器,经过端到端培训,实现了94.31%的总体精确率,印度Uttakhand州所捕捉到的资源卫星2号数据云值为97.67%的F1分。这些分比随机森林分数高30%,比独立单分辨率FCN高10%。除了用于云探测目的之外,研究还突显了多星网络的潜在问题。