JOURNAL ARTICLE

Review of Deep Learning Methods in Robotic Grasp Detection

Shehan CalderaAlexander RassauDouglas Chai

Year: 2018 Journal:   Multimodal Technologies and Interaction Vol: 2 (3)Pages: 57-57   Publisher: Multidisciplinary Digital Publishing Institute

Abstract

For robots to attain more general-purpose utility, grasping is a necessary skill to master. Such general-purpose robots may use their perception abilities to visually identify grasps for a given object. A grasp describes how a robotic end-effector can be arranged to securely grab an object and successfully lift it without slippage. Traditionally, grasp detection requires expert human knowledge to analytically form the task-specific algorithm, but this is an arduous and time-consuming approach. During the last five years, deep learning methods have enabled significant advancements in robotic vision, natural language processing, and automated driving applications. The successful results of these methods have driven robotics researchers to explore the use of deep learning methods in task-generalised robotic applications. This paper reviews the current state-of-the-art in regards to the application of deep learning methods to generalised robotic grasping and discusses how each element of the deep learning approach has improved the overall performance of robotic grasp detection. Several of the most promising approaches are evaluated and the most suitable for real-time grasp detection is identified as the one-shot detection method. The availability of suitable volumes of appropriate training data is identified as a major obstacle for effective utilisation of the deep learning approaches, and the use of transfer learning techniques is proposed as a potential mechanism to address this. Finally, current trends in the field and future potential research directions are discussed.

Keywords:
GRASP Artificial intelligence Computer science Deep learning Robotics Task (project management) Robot Object detection Lift (data mining) Obstacle Human–computer interaction Machine learning Engineering Pattern recognition (psychology) Systems engineering

Metrics

176
Cited By
15.82
FWCI (Field Weighted Citation Impact)
62
Refs
0.99
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Robot Manipulation and Learning
Physical Sciences →  Engineering →  Control and Systems Engineering
EEG and Brain-Computer Interfaces
Life Sciences →  Neuroscience →  Cognitive Neuroscience
Reinforcement Learning in Robotics
Physical Sciences →  Computer Science →  Artificial Intelligence
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