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Collection of Papers related to CV- & Geometry-based 6DOF Robotic Grasping

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My Robotic Grasping

This repositry is for saving papers related to CV- & geometry-based 6DOF robotic grasping. We MAINLY collect methods utilizing Deep Learning. Note that grasp pose detection related papers are ROUGHLY divided based on their approaches. The list below will be updated in regular basis.

Table of Contents


6D Object Pose Estimation

RGB based

RGB-D based

Towards Generalization

Researchers have recently started to investigate methods to make 6D Object Pose Estimation more generalizable. As approaches to enhance generalizability vary, we separated the list from the RGB- and RGBD-based approaches above. A lot of generalizable 6D Object Pose Estimation approaches (#-shot) are multi-stages, and utilize template matching (e.g., support images and CAD models) + classification that NNs are good at.

Survey (OPE)

Datasets (OPE)

6D Grasp Pose Detection

Generative methods

Reconstruction methods

Discriminative methods

Regression methods

Neural Representation methods

Researchers have recently started to investigate methods utilizing Neural Radiance Field (NeRF) and Implicit Neural Representation (INR). We separate these approaches as a new category of methods since they more focus on novel representation and sampling for robotic grasping.

Survey (GPD)

Datasets (GPD)

Grasp Quality Metrics

Combined metrics

ToDo Lists

Categorization of approaches in 6D Grasp Pose Detection Progress

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Collection of Papers related to CV- & Geometry-based 6DOF Robotic Grasping

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