Аннотации:
This research focuses on developing an artificial vision system for a flexible delta robot ma‑
nipulator and integrating it with machine‑to‑machine (M2M) communication to optimize real‑time
device interaction. This integration aims to increase the speed of the robotic system and improve
its overall performance. The proposed combination of an artificial vision system with M2M commu‑
nication can detect and recognize targets with high accuracy in real time within the limited space
considered for positioning, further localization, and carrying out manufacturing processes such as
assembly or sorting of parts. In this study, RGB images are used as input data for the MASK‑R‑CNN
algorithm, and the results are processed according to the features of the delta robot arm prototype.
The data obtained from MASK‑R‑CNN are adapted for use in the delta robot control system, con‑
sidering its unique characteristics and positioning requirements. M2M technology enables the robot
arm to react quickly to changes, such as moving objects or changes in their position, which is crucial
for sorting and packing tasks. The system was tested under near real‑world conditions to evaluate
its performance and reliability.