EGAD! an Evolved Grasping Analysis Dataset for diversity and reproducibility in robotic manipulation

3 Mar 2020  ·  Douglas Morrison, Peter Corke, Jürgen Leitner ·

We present the Evolved Grasping Analysis Dataset (EGAD), comprising over 2000 generated objects aimed at training and evaluating robotic visual grasp detection algorithms. The objects in EGAD are geometrically diverse, filling a space ranging from simple to complex shapes and from easy to difficult to grasp, compared to other datasets for robotic grasping, which may be limited in size or contain only a small number of object classes. Additionally, we specify a set of 49 diverse 3D-printable evaluation objects to encourage reproducible testing of robotic grasping systems across a range of complexity and difficulty. The dataset, code and videos can be found at https://dougsm.github.io/egad/

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Categories


Robotics

Datasets


Introduced in the Paper:

EGAD

Used in the Paper:

Dex-Net 2.0