On Applying Machine Learning/Object Detection Models for Analysing Digitally Captured Physical Prototypes from Engineering Design Projects
Jorgen F. Erichsen, Sampsa Kohtala, Martin Steinert, Torgeir Welo

TL;DR
This paper explores applying machine learning object detection models to analyze large datasets of digitally captured physical prototypes in engineering design, demonstrating successful classification of materials and components, and highlighting potential workflow efficiencies.
Contribution
The study retrains and evaluates two object detection models on a large dataset of physical prototypes, providing a proof-of-concept for their use in engineering design analysis workflows.
Findings
Models successfully classify materials and components.
Object detection can reduce analysis effort for large datasets.
Further integration work is needed for workflow adoption.
Abstract
While computer vision has received increasing attention in computer science over the last decade, there are few efforts in applying this to leverage engineering design research. Existing datasets and technologies allow researchers to capture and access more observations and video files, hence analysis is becoming a limiting factor. Therefore, this paper is investigating the application of machine learning, namely object detection methods to aid in the analysis of physical porotypes. With access to a large dataset of digitally captured physical prototypes from early-stage development projects (5950 images from 850 prototypes), the authors investigate applications that can be used for analysing this dataset. The authors retrained two pre-trained object detection models from two known frameworks, the TensorFlow Object Detection API and Darknet, using custom image sets of images of physical…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Manufacturing Process and Optimization · 3D Surveying and Cultural Heritage
