3DBODY.TECH 2022 - Paper 22.47

N. Nourbakhsh Kaashki et al., "Automatic Foot Measurement Extraction from a 3D Point Cloud via a Deep Neural Network", Proc. of 3DBODY.TECH 2022 - 13th Int. Conf. and Exh. on 3D Body Scanning and Processing Technologies, Lugano, Switzerland, 25-26 Oct. 2022, #47, https://doi.org/10.15221/22.47.

Title:

Automatic Foot Measurement Extraction from a 3D Point Cloud via a Deep Neural Network

Authors:

Nastaran NOURBAKHSH KAASHKI, Xinxin DAI, Pengpeng HU, Adrian MUNTEANU

Department of Electronics and Informatics, Vrije Universiteit Brussel, Brussels, Belgium

Abstract:

The foot is a vital human body part comprising a complex system of muscles and bones sustaining the human weight, and providing balance and mobility when daily activities are being performed. Extracting accurate foot measurements is of paramount importance in many applications including medical sciences, sports and fashion industry. Traditionally, footwear brands employ contact-based foot measuring methods involving a trained operator to design and produce well-fitted footwear products. However, this process is very time consuming and is prone to human errors. With the advancement of 3D scanning technologies, the foot can be scanned accurately with an affordable 3D scanning device. In this research, we propose, to the best of our knowledge, the first deep neural network (FNet) for automatic foot measurement extraction from a 3D foot point cloud. The proposed FNet is an encoder-decoder neural network which operates on the foot point cloud and outputs the foot reconstruction as well as the corresponding measurements points utilized for measurement extraction. Our study shows that teaching the network to accurately generate the measurement points, performed with the help of the well-designed loss functions, is necessary for automatic and accurate foot measurement extraction. In order to train the proposed neural network, a large dataset of complete foot scans with their corresponding measurement points and measurement values are synthesized. The performance of the proposed method has been evaluated on both synthetic test data as well as the real scans captured by the Occipital Structure Sensor Pro. The results show that our method outperforms the state-of-the-art methods in terms of accuracy and speed.

Keywords:

Foot measurement extraction, 3D point Cloud, deep neural network, encoder-decoder

Details:

Full paper: 2247nourbakhsh.pdf
Proceedings: 3DBODY.TECH 2022, 25-26 Oct. 2022, Lugano, Switzerland
Paper id#: 47
DOI: 10.15221/22.47
Presentation video: 3DBodyTech2022_47_nourbakhsh.mp4

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© Hometrica Consulting - Dr. Nicola D'Apuzzo, Switzerland, hometrica.ch.
Reproduction of the proceedings or any parts thereof (excluding short quotations for the use in the preparation of reviews and technical and scientific papers) may be made only after obtaining the specific approval of the publisher. The papers appearing in the proceedings reflect the author's opinions. Their inclusion in these publications does not necessary constitute endorsement by the editor or by the publisher. Authors retain all rights to individual papers.


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