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
Deep Reinforcement Learning for Vision-Based Robotic Grasping: A Simulated Comparative Evaluation of Off-Policy MethodsCode0
Edge-Based Recognition of Novel Objects for Robotic Grasping0
Domain Randomization and Generative Models for Robotic Grasping0
The Feeling of Success: Does Touch Sensing Help Predict Grasp Outcomes?Code0
Robotic Pick-and-Place of Novel Objects in Clutter with Multi-Affordance Grasping and Cross-Domain Image MatchingCode1
Using Simulation and Domain Adaptation to Improve Efficiency of Deep Robotic GraspingCode1
AirCode: Unobtrusive Physical Tags for Digital Fabrication0
Transferring End-to-End Visuomotor Control from Simulation to Real World for a Multi-Stage TaskCode0
End-to-End Learning of Semantic Grasping0
A Fast Method For Computing Principal Curvatures From Range ImagesCode0
Learning a visuomotor controller for real world robotic grasping using simulated depth images0
3D Semantic Segmentation of Modular Furniture using rjMCMCCode0
An Integrated Simulator and Dataset that Combines Grasping and Vision for Deep Learning0
Robotic Grasp Detection using Deep Convolutional Neural Networks0
Latest Datasets and Technologies Presented in the Workshop on Grasping and Manipulation Datasets0
Fast Graph-Based Object Segmentation for RGB-D Images0
Learning Hand-Eye Coordination for Robotic Grasping with Deep Learning and Large-Scale Data Collection0
Rethinking the Inception Architecture for Computer VisionCode1
Real-Time Grasp Detection Using Convolutional Neural NetworksCode1
Deep Learning for Detecting Robotic Grasps0
Towards Holistic Scene Understanding: Feedback Enabled Cascaded Classification Models0
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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