Deep Learning-Based Semantic Segmentation of Remote Sensing Images: A Survey
L Huang, B Jiang, S Lv, Y Liu… - IEEE Journal of Selected …, 2023 - ieeexplore.ieee.org
Semantic segmentation of remote sensing images (SSRSIs), which aims to assign a
category to each pixel in remote sensing images, plays a vital role in a broad range of …
category to each pixel in remote sensing images, plays a vital role in a broad range of …
Graph attention guidance network with knowledge distillation for semantic segmentation of remote sensing images
Deep learning has become a popular method for studying the semantic segmentation of
high-resolution remote sensing images (HRRSIs). Existing methods have adopted …
high-resolution remote sensing images (HRRSIs). Existing methods have adopted …
Semantic segmentation model for land cover classification from satellite images in Gambella National Park, Ethiopia
MY Lilay, GD Taye - SN Applied Sciences, 2023 - Springer
This work uses machine learning approaches to present semantic segmentation for land
cover classification in Gambella National Park (GNP). Land cover classification has become …
cover classification in Gambella National Park (GNP). Land cover classification has become …
Semi-supervised adversarial semantic segmentation network using transformer and multiscale convolution for high-resolution remote sensing imagery
Y Zheng, M Yang, M Wang, X Qian, R Yang, X Zhang… - Remote Sensing, 2022 - mdpi.com
Semantic segmentation is a crucial approach for remote sensing interpretation. High-
precision semantic segmentation results are obtained at the cost of manually collecting …
precision semantic segmentation results are obtained at the cost of manually collecting …
Calibrated focal loss for semantic labeling of high-resolution remote sensing images
Currently, the most advanced high-resolution remote sensing image (HRRSI) semantic
labeling methods rely on deep neural networks. However, HRRSIs naturally have a serious …
labeling methods rely on deep neural networks. However, HRRSIs naturally have a serious …
[HTML][HTML] Lightweight Deep Learning Models for High-Precision Rice Seedling Segmentation from UAV-Based Multispectral Images
P Zhang, X Sun, D Zhang, Y Yang, Z Wang - Plant Phenomics, 2023 - spj.science.org
Accurate segmentation and detection of rice seedlings is essential for precision agriculture
and high-yield cultivation. However, current methods suffer from high computational …
and high-yield cultivation. However, current methods suffer from high computational …
A transformer-based approach empowered by a self-attention technique for semantic segmentation in remote sensing
Abstract Semantic segmentation of Remote Sensing (RS) images involves the classification
of each pixel in a satellite image into distinct and non-overlapping regions or segments. This …
of each pixel in a satellite image into distinct and non-overlapping regions or segments. This …
Frequency-Based Optimal Style Mix for Domain Generalization in Semantic Segmentation of Remote Sensing Images
Supervised learning methods assume that training and test data are sampled from the same
distribution. However, this assumption is not always satisfied in practical situations of land …
distribution. However, this assumption is not always satisfied in practical situations of land …
[HTML][HTML] Semantic segmentation of UAV images based on transformer framework with context information
With the advances in Unmanned Aerial Vehicles (UAVs) technology, aerial images with
huge variations in the appearance of objects and complex backgrounds have opened a new …
huge variations in the appearance of objects and complex backgrounds have opened a new …
DMAU-Net: An Attention-Based Multiscale Max-Pooling Dense Network for the Semantic Segmentation in VHR Remote-Sensing Images
Y Yang, J Dong, Y Wang, B Yu, Z Yang - Remote Sensing, 2023 - mdpi.com
High-resolution remote-sensing images cover more feature information, including texture,
structure, shape, and other geometric details, while the relationships among target features …
structure, shape, and other geometric details, while the relationships among target features …