Faster_RCNN_for_DOTA

Object detection model

This repository provides code for training a Faster R-CNN object detection model on DOTA datasets.

Code used for training Faster R-CNN on DOTA

GitHub

337 stars
13 watching
102 forks
Language: Python
last commit: over 6 years ago
aerialdetectiondotafaster-rcnn

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