An Intelligent Autonomous Document Mobile Delivery Robot using Deep Learning

Journal article


Authors/Editors


Strategic Research Themes


Publication Details

Author listThittaporn Ganokratanaa, Mahasak Ketcham

PublisherInternational Association of Online Engineering (IAOE)

Publication year2022

Journal acronymiJIM

Volume number16

Issue number21

Start page4

End page22

Number of pages19

ISSN18657923

eISSN1865-7923

URLhttps://online-journals.org/index.php/i-jim/article/view/32071

LanguagesEnglish-United States (EN-US)


View on publisher site


Abstract

This paper presents an intelligent autonomous document mobile delivery robot using a deep learning approach. The robot is built as a prototype for document delivery service for use in offices. It can adaptively move across different surfaces, such as terrazzo, canvas, and wooden. In this work, we introduce a convolutional neural network (CNN) to recognize the traffic lanes and the stop signs with the assumption that all surfaces have identical traffic lanes. We train the model using a custom indoor traffic lane and stop sign dataset with the label of motion directions. CNN extracts a direction-of-motion feature to estimate the robot's direction and to stop the robot based on an input image monocular camera view. These predictions are used to adjust the robot's direction and speed. The experimental results show that this robot can move across different surfaces along with the same structured traffic lanes, achieving the model accuracy of 96.31%. The proposed robot helps to facilitate document delivery for office workers, allowing them to work on other tasks more efficiently.


Keywords

autonomousConvolutional neural networks (CNN)delivery robotmobile


Last updated on 2023-20-09 at 07:37