segavatest
Segavatest is a benchmarking framework for segmentation algorithms in computer vision. It provides a standardized set of datasets, evaluation protocols, and reference implementations intended to facilitate fair comparisons among semantic and instance segmentation methods.
The framework includes a dataset catalog with established train/validation/test splits, a suite of evaluation metrics such
Segavatest is maintained by a community of researchers and practitioners and often features public leaderboards, versioned
Limitations include sensitivity to dataset biases and domain shift, which can affect the transferability of results