Abstract

Binocular stereovision has become one of the development trends of machine vision and has been widely used in robot recognition and positioning. However, the current research on omnidirectional motion handling robots at home and abroad is too limited, and many problems cannot be solved well, such as single operating systems, complex algorithms, and low recognition rates. To make a high-efficiency handling robot with high recognition rate, this article studies the problem of robot image feature extraction and matching and proposes an improved speeded up robust features (SURF) algorithm that combines the advantages of both SURF and Binary Robust Independent Elementary Features. The algorithm greatly simplifies the complexity of the algorithm. Experiments show that the improved algorithm greatly improves the speed of matching and ensures the real-time and robustness of the algorithm. In this article, the problem of positioning the target workpiece of the robot is studied. The three-dimensional (3-D) reconstruction of the target workpiece position is performed to obtain the 3-D coordinates of the target workpiece position, thereby completing the positioning work. This article designs a software framework for real-time 3-D object reconstruction. A Bayesian-based matching algorithm combined with Delaunay triangulation is used to obtain the relationship between supported and nonsupported points, and 3-D reconstruction of target objects from sparse to dense matches is achieved.

Highlights

  • In the process of human cognition of the world, we perceive external information mainly through observation

  • This article studies the problem of robot image feature extraction and matching and proposes an improved speeded up robust features (SURF) algorithm that combines the advantages of both SURF and Binary Robust Independent Elementary Features (BRIEF)

  • The matching accuracy of the improved SURF algorithm in this article is above 95%, which is higher than the traditional SURF algorithm about 3.6 percentage points

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Summary

Introduction

In the process of human cognition of the world, we perceive external information mainly through observation. Eighty pecent of the information is obtained through vision. With the rapid development of industrial technology, traditional industrial production methods can no longer meet the requirements of the times. It has great application value in industrial production. Machine vision works by simulating human vision functions.[1] Industrial charge-coupled device cameras are used to capture images of target scenes or objects. Different image processing methods are used in the corresponding optical imaging system to obtain the various results we want

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