3DCD
Change Detection
Automatically inferring 2D and 3D change detection maps from bitemporal optical images without relying on DSMs.
Remote sensing elevation (3D) change detection with deep learning
29 stars
2 watching
2 forks
Language: Python
last commit: about 2 years ago
Linked from 1 awesome list
change-detectiondatasetdeep-learningearth-observationelevation-changepytorchremote-sensing
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