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Object Detection Recognition and Robot Grasping Based on Machine Learning: A Survey

Qiang Bai, Shaobo Li, Jing Yang, Qisong Song, Zhiang Li, Xingxing Zhang

2020IEEE Access147 citationsDOIOpen Access PDF

Abstract

With the rapid development of machine learning, its powerful function in the machine vision field is increasingly reflected. The combination of machine vision and robotics to achieve the same precise and fast grasping as that of humans requires high-precision target detection and recognition, location and reasonable grasp strategy generation, which is the ultimate goal of global researchers and one of the prerequisites for the large-scale application of robots. Traditional machine learning has a long history and good achievements in the field of image processing and robot control. The CNN (convolutional neural network) algorithm realizes training of large-scale image datasets, solves the disadvantages of traditional machine learning in large datasets, and greatly improves accuracy, thereby positioning CNNs as a global research hotspot. However, the increasing difficulty of labeled data acquisition limits their development. Therefore, unsupervised learning, self-supervised learning and reinforcement learning, which are less dependent on labeled data, have also undergone rapid development and achieved good performance in the fields of image processing and robot capture. According to the inherent defects of vision, this paper summarizes the research achievements of tactile feedback in the fields of target recognition and robot grasping and finds that the combination of vision and tactile feedback can improve the success rate and robustness of robot grasping. This paper provides a systematic summary and analysis of the research status of machine vision and tactile feedback in the field of robot grasping and establishes a reasonable reference for future research.

Topics & Concepts

Artificial intelligenceComputer scienceRobotConvolutional neural networkMachine visionMachine learningGRASPRoboticsRobustness (evolution)Robot learningComputer visionField (mathematics)Image processingDeep learningCognitive neuroscience of visual object recognitionFeature extractionMobile robotImage (mathematics)Programming languageGeneBiochemistryPure mathematicsChemistryMathematicsRobot Manipulation and LearningAnomaly Detection Techniques and ApplicationsAdvanced Neural Network Applications
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