Visual Inspection of the Aircraft Surface Using a Teleoperated Reconfigurable Climbing Robot and Enhanced Deep Learning Technique

Author:

Ramalingam Balakrishnan1ORCID,Manuel Vega-Heredia12,Elara Mohan Rajesh1ORCID,Vengadesh Ayyalusami1,Lakshmanan Anirudh Krishna13,Ilyas Muhammad14ORCID,James Tan Jun Yuan5

Affiliation:

1. Singapore University of Technology and Design, Singapore 487372

2. Department of Engineering and Technology, Universidad de Occidente, Campus Los Mochis, 81223, Mexico

3. Department of Computer Science, Birla Institute of Technology and Science (BITS) Pilani, Pilani Campus, 333031, Vidyavihar, Rajasthan, India

4. Department of Electrical Engineering, UET Lahore, NWL Campus 54890, Pakistan

5. ST Engineering Aerospace, ST Engineering, Singapore 539938

Abstract

Aircraft surface inspection includes detecting surface defects caused by corrosion and cracks and stains from the oil spill, grease, dirt sediments, etc. In the conventional aircraft surface inspection process, human visual inspection is performed which is time-consuming and inefficient whereas robots with onboard vision systems can inspect the aircraft skin safely, quickly, and accurately. This work proposes an aircraft surface defect and stain detection model using a reconfigurable climbing robot and an enhanced deep learning algorithm. A reconfigurable, teleoperated robot, named as “Kiropter,” is designed to capture the aircraft surface images with an onboard RGB camera. An enhanced SSD MobileNet framework is proposed for stain and defect detection from these images. A Self-filtering-based periodic pattern detection filter has been included in the SSD MobileNet deep learning framework to achieve the enhanced detection of the stains and defects on the aircraft skin images. The model has been tested with real aircraft surface images acquired from a Boeing 737 and a compact aircraft’s surface using the teleoperated robot. The experimental results prove that the enhanced SSD MobileNet framework achieves improved detection accuracy of aircraft surface defects and stains as compared to the conventional models.

Publisher

Hindawi Limited

Subject

Aerospace Engineering

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