Abstract

Despite the great possibilities of modern neural network architectures concerning the problems of object detection and recognition, the output of such models is the local (pixel) coordinates of objects bounding boxes in the image and their predicted classes. However, in several practical tasks, it is necessary to obtain more complete information about the object from the image. In particular, for robotic apple picking, it is necessary to clearly understand where and how much to move the grabber. To determine the real position of the apple relative to the source of image registration, it is proposed to use the Intel Real Sense depth camera and aggregate information from its depth and brightness channels. The apples detection is carried out using the YOLOv3 architecture; then, based on the distance to the object and its localization in the image, the relative distances are calculated for all coordinates. In this case, to determine the coordinates of apples, a transition to a symmetric coordinate system takes place by means of simple linear transformations. Estimating the position in a symmetric coordinate system allows estimating not only the magnitude of the shift but also the location of the object relative to the camera. The proposed approach makes it possible to obtain position estimates with high accuracy. The approximate root mean square error is 7–12 mm, depending on the range and axis. As for precision and recall metrics, the first is 100% and the second is 90%.

Highlights

  • Today, there is a rapid surge in the use of artificial intelligence systems in various spheres of the economy

  • Which allowsfor registeraddition,with the pyrealsense2 module was used,aswhich provides library, convenient functions ing images and video providing convenient visualization of processing results working with Real Sense cameras, as well as the OpenCV library, which allows registering in real time

  • The article presents an algorithm for joint detection, recognition of apples, and their relative coordinate estimation

Read more

Summary

Introduction

There is a rapid surge in the use of artificial intelligence systems in various spheres of the economy. Agriculture is one of the areas undergoing rapid digitalization [1,2,3]. According to the United Nations (UN) report [4], the number of the world’s population will grow rapidly in the 30–50 years; in particular, by 2050, it is expected that the. Questions arise about providing such several people with provisions. The solution to this problem is impossible without increasing the efficiency in the field of agriculture.

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call