← Marketplace

Sports facilities detection

Description

Coming back soon: currently not available. Detects baseball fields, tennis courts, soccer fields, and stadiums in cities and towns.

Technical information

Sports Facilities Detection is an analytics algorithm for identifying sports facilities such as baseball parks, tennis courts, soccer fields, and stadiums in satellite images in .png or .jpeg or .jpg or .tiff format. The algorithm can detect sports facilities in images with ground sampling distance (GSD) of 0.55m or less. Output is provided as images with detection bounding boxes overlayed on the sports facilites and detection details in a .json file. The algorithm is trained on data-set obtained from South-Eastern Asia.

Technical Description

The algorithm uses generative deep learning techniques and CNN-based Artificial Neural Network architecture to achieve the computer vision objective. The solution is built in Python and uses Tensorflow at backend as deep learning framework. The algorithm processes satellite images in GeoTIFF, TIFF, PNG, JPG or JPEG formats, with no limitations on image dimensions.

The use cases are infrastructure monitoring, urban planning and construction.

General InformationDescription
Supported input dataInput is required as a set of PNG, JPEG or TIFF images. The image is expected to have Ground Sampling Distance (GSD) less than 0.55 m
Output data formatThe output is resultant image with detection bounding boxes overlayed onto the input images
Algorithm Training Data DetailsThe algorithm has been trained using custom built data sets from satellite images captured over South Eastern Asian region.
Performance0.5 IoU and has detection of 0.5mAP on satellite images with GSD 0.55m

Fore more information, visit the provider website here.


Terms & conditions

View the End User License Agreement conditions

Ready to get started?

Explore UP42 now.

Sign in or create an account