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Remote Sensing AI's Projects

aitlas icon aitlas

AiTLAS implements state-of-the-art AI methods for exploratory and predictive analysis of satellite images.

hexalcseg icon hexalcseg

A Historical Benchmark Dataset from Hexagon Satellite Images for Land Cover Segmentation

hrplanes icon hrplanes

A benchmark dataset for deep learning-based airplane detection: HRPlanes

hrplanes-highresolution-planes-benchmark-dataset icon hrplanes-highresolution-planes-benchmark-dataset

High Resolution Planes Benchmark Dataset-HRPlanes. This repo contains weights of YOLOv4 and Faster R-CNN networks trained with HRPlanes dataset. YOLOv4 training have been performed using Darknet (https://github.com/AlexeyAB/darknet). Faster R-CNN have been trained using TensorFlow Object Detection API v1.13 (https://github.com/tensorflow/models/tree/r1.13.0).

istanbul-building-dataset-benchmark-building-extraction-dataset-and-dl-models icon istanbul-building-dataset-benchmark-building-extraction-dataset-and-dl-models

This repo contains weights of Unet++ model with SE-ResNeXt101 encoder trained with Istanbul, Inria and Massachusetts datasets seperately. Trainings have been realized using PyTorch and segmentation models library (https://github.com/qubvel/segmentation_models.pytorch) We also provide an inference notebook to run prediction on GeoTiff images. This notebook also outputs prediction images as GeoTiff.

pancolorgan icon pancolorgan

Rethinking CNN-Based Pansharpening: Guided Colorization of Panchromatic Images via GANs.

pancolorgan-vhr-satellite-images icon pancolorgan-vhr-satellite-images

Rethinking CNN-Based Pansharpening: Guided Colorization of Panchromatic Images via GANs. Pretrained Weights and GAN training parts of the code can be found in this repo.

sewar icon sewar

All image quality metrics you need in one package.

vhrships icon vhrships

This study focuses on all stages of ship classification in the optical satellite images. The proposed “Hierarchical Design (HieD)” approach, which is based on deep learning techniques, performs Detection, Localization, Recognition and Identification (DLRI) of the ships in the optical satellite images. HieD is an end-to-end approach which allows the optimization of each stage of the DLRI independently. A unique and rich ship dataset (High Resolution Ships, HRShips), which is formed by the Google Earth Pro software, is used in this study. While Xception network is used in detection, recognition and identification stages; YOLOv4 is preferred for the localization of the ships.

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