Learning-based robotic grasping: A review
Z Xie, X Liang, C Roberto - Frontiers in Robotics and AI, 2023 - frontiersin.org
As personalization technology increasingly orchestrates individualized shopping or
marketing experiences in industries such as logistics, fast-moving consumer goods, and …
marketing experiences in industries such as logistics, fast-moving consumer goods, and …
Few-shot object detection via classification refinement and distractor retreatment
We aim to tackle the challenging Few-Shot Object Detection (FSOD) where data-scarce
categories are presented during the model learning. The failure modes of FSOD are …
categories are presented during the model learning. The failure modes of FSOD are …
SE-ResUNet: A novel robotic grasp detection method
In this letter, a novel grasp detection neural network Squeeze-and-Excitation ResUNet (SE-
ResUNet) is developed, where the residual block with the channel attention is integrated …
ResUNet) is developed, where the residual block with the channel attention is integrated …
Robotic objects detection and grasping in clutter based on cascaded deep convolutional neural network
D Liu, X Tao, L Yuan, Y Du… - IEEE Transactions on …, 2021 - ieeexplore.ieee.org
The complex and changeable robotic operating environment will often cause the low
success rate or failure of the robot grasping. This article proposes a grasp pose detection …
success rate or failure of the robot grasping. This article proposes a grasp pose detection …
RGB-D grasp detection via depth guided learning with cross-modal attention
Planar grasp detection is one of the most fundamental tasks to robotic manipulation, and the
recent progress of consumer-grade RGB-D sensors enables delivering more …
recent progress of consumer-grade RGB-D sensors enables delivering more …
Skgnet: Robotic grasp detection with selective kernel convolution
Real-time and accuracy are important evaluation metrics of robotic grasp detection
algorithms. To further improve the accuracy on the premise of ensuring real-time …
algorithms. To further improve the accuracy on the premise of ensuring real-time …
Weight imprinting classification-based force grasping with a variable-stiffness robotic gripper
Universal grasping for a diverse range of objects is a challenging problem in robotics,
especially in the presence of mixed properties with fragile/rigid and heavy/light. Toward …
especially in the presence of mixed properties with fragile/rigid and heavy/light. Toward …
GPDAN: Grasp pose domain adaptation network for sim-to-real 6-DoF object grasping
In this letter, we propose a novel Grasp Pose Domain Adaptation Network (GPDAN) to
achieve sim-to-real domain adaptation for 6-DoF grasp pose detection. The main task of …
achieve sim-to-real domain adaptation for 6-DoF grasp pose detection. The main task of …
Masked self-supervision for remaining useful lifetime prediction in machine tools
Prediction of Remaining Useful Lifetime (RUL) in the modern manufacturing and automation
workplace for machines and tools is essential in Industry 4.0. This is clearly evident as …
workplace for machines and tools is essential in Industry 4.0. This is clearly evident as …
Joint segmentation and grasp pose detection with multi-modal feature fusion network
X Liu, Y Zhang, H Cao, D Shan… - 2023 IEEE International …, 2023 - ieeexplore.ieee.org
Efficient grasp pose detection is essential for robotic manipulation in cluttered scenes.
However, most methods only utilize point clouds or images for prediction, ignoring the …
However, most methods only utilize point clouds or images for prediction, ignoring the …