Deep learning-based object detection techniques for remote sensing images: A survey
Z Li, Y Wang, N Zhang, Y Zhang, Z Zhao, D Xu, G Ben… - Remote Sensing, 2022 - mdpi.com
Object detection in remote sensing images (RSIs) requires the locating and classifying of
objects of interest, which is a hot topic in RSI analysis research. With the development of …
objects of interest, which is a hot topic in RSI analysis research. With the development of …
Missing information reconstruction of remote sensing data: A technical review
Because of sensor malfunction and poor atmospheric conditions, there is usually a great
deal of missing information in optical remote sensing data, which reduces the usage rate …
deal of missing information in optical remote sensing data, which reduces the usage rate …
YOLOV4_CSPBi: enhanced land target detection model
The identification of small land targets in remote sensing imagery has emerged as a
significant research objective. Despite significant advancements in object detection …
significant research objective. Despite significant advancements in object detection …
What good are unmanned aircraft systems for agricultural remote sensing and precision agriculture?
ER Hunt Jr, CST Daughtry - International journal of remote sensing, 2018 - Taylor & Francis
Remote sensing from unmanned aircraft systems (UAS) was expected to be an important
new technology to assist farmers with precision agriculture, especially crop nutrient …
new technology to assist farmers with precision agriculture, especially crop nutrient …
A review of remote sensing image classification techniques: The role of spatio-contextual information
This paper reviewed major remote sensing image classification techniques, including pixel-
wise, sub-pixel-wise, and object-based image classification methods, and highlighted the …
wise, sub-pixel-wise, and object-based image classification methods, and highlighted the …
Thick cloud and cloud shadow removal in multitemporal imagery using progressively spatio-temporal patch group deep learning
Thick cloud and its shadow severely reduce the data usability of optical satellite remote
sensing data. Although many approaches have been presented for cloud and cloud shadow …
sensing data. Although many approaches have been presented for cloud and cloud shadow …
Recovering missing pixels for Landsat ETM+ SLC-off imagery using multi-temporal regression analysis and a regularization method
Since the scan line corrector (SLC) of the Landsat Enhanced Thematic Mapper Plus (ETM+)
sensor failed permanently in 2003, about 22% of the pixels in an SLC-off image are not …
sensor failed permanently in 2003, about 22% of the pixels in an SLC-off image are not …
Incorporating spatial information in spectral unmixing: A review
C Shi, L Wang - Remote Sensing of Environment, 2014 - Elsevier
Spectral unmixing is the process of decomposing the spectral signature of a mixed pixel into
a set of endmembers and their corresponding abundances. Endmembers are spectra of the …
a set of endmembers and their corresponding abundances. Endmembers are spectra of the …
[HTML][HTML] A review of geostatistical simulation models applied to satellite remote sensing: Methods and applications
Despite an ever-increasing number of spaceborne, airborne, and ground-based data
acquisition platforms, remote sensing data are still often spatially incomplete or temporally …
acquisition platforms, remote sensing data are still often spatially incomplete or temporally …
Cloud removal for remotely sensed images by similar pixel replacement guided with a spatio-temporal MRF model
Cloud cover is generally present in remotely sensed images, which limits the potential of the
images for ground information extraction. Therefore, removing the clouds and recovering the …
images for ground information extraction. Therefore, removing the clouds and recovering the …