GAS
Grasp Area Segmentation
ImagesIntroduced 2023-03-17
GAS (Grasp Area Segmentation) dataset consists of 10089 RGB images of cluttered scenes grouped into 1121 grasp-area segmentation tasks. For each RGB image we provide a binary segmentation map with the graspable and non-graspable regions for every object in the scene. The dataset can be used for meta-training part-based grasp area estimation networks.
For creating the GAS dataset we use the RGB images and corresponding ground truth segmentation masks from the GraspNet 1-Billion dataset.
Related Benchmarks
GasHisSDB/Image Classification/AccuracyGasHisSDB/Image Classification/F1-ScoreGasHisSDB/Image Classification/PrecisionGasch1 Funcat/Multi-Label Classification/AU(PRC)Gasch1 GO/Multi-Label Classification/AU(PRC)Gasch2 Funcat/Multi-Label Classification/AU(PRC)Gasch2 GO/Multi-Label Classification/AU(PRC)