SOTAVerified

Robotic Grasping

This task is composed of using Deep Learning to identify how best to grasp objects using robotic arms in different scenarios. This is a very complex task as it might involve dynamic environments and objects unknown to the network.

Papers

Showing 226246 of 246 papers

TitleStatusHype
Learning Any-View 6DoF Robotic Grasping in Cluttered Scenes via Neural Surface Rendering0
Learning a visuomotor controller for real world robotic grasping using simulated depth images0
Learning Hand-Eye Coordination for Robotic Grasping with Deep Learning and Large-Scale Data Collection0
Contact2Grasp: 3D Grasp Synthesis via Hand-Object Contact Constraint0
Learning Object Localization and 6D Pose Estimation from Simulation and Weakly Labeled Real Images0
Learning Probabilistic Multi-Modal Actor Models for Vision-Based Robotic Grasping0
Learning to Generate All Feasible Actions0
Learning to Grasp from a Single Demonstration0
Learning to Grasp on the Moon from 3D Octree Observations with Deep Reinforcement Learning0
Learning to Synthesize Volumetric Meshes from Vision-based Tactile Imprints0
Lightweight Convolutional Neural Network with Gaussian-based Grasping Representation for Robotic Grasping Detection0
Local Occupancy-Enhanced Object Grasping with Multiple Triplanar Projection0
ManiBox: Enhancing Spatial Grasping Generalization via Scalable Simulation Data Generation0
MonoGraspNet: 6-DoF Grasping with a Single RGB Image0
More Than a Feeling: Learning to Grasp and Regrasp using Vision and Touch0
MPF6D: Masked Pyramid Fusion 6D Pose Estimation0
MTF-Grasp: A Multi-tier Federated Learning Approach for Robotic Grasping0
Natural Language Robot Programming: NLP integrated with autonomous robotic grasping0
NeRF-Feat: 6D Object Pose Estimation using Feature Rendering0
NeRF in the Palm of Your Hand: Corrective Augmentation for Robotics via Novel-View Synthesis0
NeuGrasp: Generalizable Neural Surface Reconstruction with Background Priors for Material-Agnostic Object Grasp Detection0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1FlexLoG-CDmAP56.02Unverified
2GtG2.0mAP53.42Unverified
3Scale-Balanced-Grasp-CDmAP48.97Unverified
4graspness-CDmAP48.75Unverified
5HGGD-CDmAP47.54Unverified
6HGGDmAP44.24Unverified
7graspnet-baseline-CDmAP35.45Unverified
8graspnet-baselinemAP21.41Unverified
#ModelMetricClaimedVerifiedStatus
1grasp_det_seg_cnn (rgb only, IW split)5 fold cross validation98.2Unverified
2GR-ConvNet5 fold cross validation97.7Unverified
3ResNet50 multi-grasp predictor5 fold cross validation96Unverified
4Multi-Modal Grasp Predictor5 fold cross validation89.21Unverified
5AlexNet, MultiGrasp5 fold cross validation88Unverified
6GGCNN5 fold cross validation73Unverified
7Fast Search5 fold cross validation60.5Unverified
#ModelMetricClaimedVerifiedStatus
1Efficient-GraspingAccuracy (%)95.6Unverified
2GR-ConvNetAccuracy (%)94.6Unverified
3grasp_det_seg_cnn (rgb only)Accuracy (%)92.95Unverified