satellite-image-deep-learning/techniques

Techniques for deep learning with satellite & aerial imagery

pythonmachine-learningdeep-neural-networksdeep-learningtensorflowkeraspytorchsentineldatasetremote-sensingimage-classificationconvolutional-neural-networksobject-detectionsatellite-imagerydatasetssatellite-dataearth-observationsatellite-images
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Techniques for deep learning on satellite and aerial imagery. 👉 satellite-image-deep-learning.com 👈 Introduction Deep learning has transformed the way satellite and aerial images are analyzed and interpreted. These images pose unique challenges, such as large sizes and diverse object classes, which offer opportunities for deep learning researchers. This repository offers a comprehensive overview of various deep learning techniques for analyzing satellite and aerial imagery, including architectures,...
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