Cloud/snow recognition is one application of satellite remote sensing imagery in natural disaster monitoring. Deep learning technology has contributed to the improvement of the performance of cloud/snow recognition. However, deep learning-based methods cannot well balance the performance and efficiency of cloud/snow recognition. In this paper, an augmented multi-dimensional and multi-grained Cascade Forest is proposed for cloud/snow recognition. The multi-dimensional deep forest structure with the representation learning ability allows it to capture the spatial and spectral information of cloud/snow satellite imagery accordingly equipped with good recognition efficiency. Besides, a simple augmentation Random Erasing method is introduced for...
Cloud and snow detection is an important part of satellite remote sensing image processing, and also...
Detecting changes in land use and land cover (LULC) from space has long been the main goal of satell...
Snow cover area is a very critical parameter for hydrologic cycle of the Earth. Furthermore, it will...
Snow coverage mapping plays a vital role not only in studying hydrology and climatology, but also in...
Snow coverage mapping plays a vital role not only in studying hydrology and climatology, but also in...
Clouds and snow in remote sensing imageries cover underlying surface information, reducing image ava...
Because clouds and snow block the underlying surface and interfere with the information extracted fr...
Snow cover in Qinghai-Tibetan plateau (QT plateau) is very important to global climate change. Becau...
Snow coverage mapping plays a vital role not only in studying hydrology and climatology, but also in...
Automatic cloud detection in remote sensing images is of great significance. Deep-learning-based met...
Cloud and snow detection is one of the most significant tasks for remote sensing image processing. H...
Clouds are a very important factor in the availability of optical remote sensing images. Recently, d...
Clouds are a very important factor in the availability of optical remote sensing images. Recently, d...
Cloud and snow identification in remote sensing images is critical for snow mapping and snow hydrolo...
The lack of revisit in long-term satellite time series such as Landsat is an issue to assess ecosyst...
Cloud and snow detection is an important part of satellite remote sensing image processing, and also...
Detecting changes in land use and land cover (LULC) from space has long been the main goal of satell...
Snow cover area is a very critical parameter for hydrologic cycle of the Earth. Furthermore, it will...
Snow coverage mapping plays a vital role not only in studying hydrology and climatology, but also in...
Snow coverage mapping plays a vital role not only in studying hydrology and climatology, but also in...
Clouds and snow in remote sensing imageries cover underlying surface information, reducing image ava...
Because clouds and snow block the underlying surface and interfere with the information extracted fr...
Snow cover in Qinghai-Tibetan plateau (QT plateau) is very important to global climate change. Becau...
Snow coverage mapping plays a vital role not only in studying hydrology and climatology, but also in...
Automatic cloud detection in remote sensing images is of great significance. Deep-learning-based met...
Cloud and snow detection is one of the most significant tasks for remote sensing image processing. H...
Clouds are a very important factor in the availability of optical remote sensing images. Recently, d...
Clouds are a very important factor in the availability of optical remote sensing images. Recently, d...
Cloud and snow identification in remote sensing images is critical for snow mapping and snow hydrolo...
The lack of revisit in long-term satellite time series such as Landsat is an issue to assess ecosyst...
Cloud and snow detection is an important part of satellite remote sensing image processing, and also...
Detecting changes in land use and land cover (LULC) from space has long been the main goal of satell...
Snow cover area is a very critical parameter for hydrologic cycle of the Earth. Furthermore, it will...