LARD

Runway detector

A dataset and toolset for training object detection models to identify runways in aerial images during landing phases.

A runway dataset and a generator of synthetic aerial images with automatic labeling.

GitHub

85 stars
1 watching
8 forks
Language: Jupyter Notebook
last commit: 3 months ago

Related projects:

Repository Description Stars
naver-ai/vidt An object detection model that extends transformer-based technology to also support instance segmentation 307
al-sad/dronerf Develops and provides tools for detecting and identifying drones using their RF signals in real-time. 83
microsoft/roaddetections Automating road detection from aerial imagery using deep learning techniques. 538
jdbcode/llr-landtrendr An IDL implementation of Landsat-based trend analysis algorithm modified to work with processed Landsat imagery. 10
liulei01/drbox An open-source deep learning framework for detecting rotated objects in images 421
liuziwei7/fashion-detection Automates clothes detection in images using a deep learning-based framework 483
arirawr/arkit-floorislava An ARKit project that detects horizontal planes in the environment and renders them as lava 124
ori-drs/plane_seg A software library for robust plane fitting and edge detection from 3D point cloud data 160
optimalscale/detgpt A deep learning model that detects and reasons about objects in images. 755
v2ai/det3d A general-purpose 3D object detection codebase that supports multiple algorithms and datasets 1,503
cosmiq/yolt A tool for rapid multi-scale object detection in satellite images using convolutional neural networks. 664
autodistill/autodistill-grounded-sam An implementation of GroundedSAM as a Base Model for object detection in images given text captions. 44
lopuhin/kaggle-dstl An image classification project that uses a U-Net network to detect features in satellite imagery 207
icetttb/planetr3d An implementation of a deep learning-based method for 3D plane recovery from images. 93
alvations/sugali A system designed to identify the language of an arbitrary text string using machine learning and multiple data sources. 2