Automotive Diagnostics as a Service: An Artificially Intelligent Mobile Application for Tire Condition Assessment
Author(s)
Siegel, Joshua Eric; Sun, Yongbin; Sarma, Sanjay EAbstract
Vehicle tires must be maintained to assure performance, efficiency, and safety. Though vehicle owners may monitor tread depth and air pressure, most are unaware of the safety risks of degrading rubber. This paper identifies the need for tire material condition monitoring and develops a densely connected convolutional neural network to identify cracking from smartphone photographs. This model attains an accuracy of 81.2% on cropped outsample images, besting inexperienced humans’ 55% performance. We develop a web service using this model as the basis of an AI-backed “Diagnostics-as-a-Service” platform for online vehicle condition assessment. By encoding knowledge of visual risk indicators into a neural network model operable from a user’s trusted smartphone, we raise awareness of the risk of degraded rubber and improve vehicle safety without requiring specialized operator training.
Date issued
2018-06Department
Massachusetts Institute of Technology. Department of Mechanical EngineeringJournal
International Conference on AI and Mobile Services
Publisher
Springer International Publishing
Citation
Siegel, Joshua E. et al. "Automotive Diagnostics as a Service: An Artificially Intelligent Mobile Application for Tire Condition Assessment." International Conference on AI and Mobile Services, June 2018, Seattle, WA, USA, Springer, June 2018 © 2018 Springer
Version: Author's final manuscript
ISBN
9783319943602
9783319943619
ISSN
0302-9743
1611-3349
Collections
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