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Anatomical 3D Modeling Using IR Sensors and Radiometric Processing Based on Structure from Motion: Towards a Tool for the Diabetic Foot Diagnosis

Overview
Journal Sensors (Basel)
Publisher MDPI
Specialty Biotechnology
Date 2021 Jul 2
PMID 34204151
Citations 1
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Abstract

Medical infrared thermography has proven to be a complementary procedure to physiological disorders, such as the diabetic foot. However, the technique remains essentially based on 2D images that display partial anatomy. In this context, a 3D thermal model provides improved visualization and faster inspection. This paper presents a 3D reconstruction method associated with temperature information. The proposed solution is based on a Structure from Motion and Multi-view Stereo approach, exploiting a set of multimodal merged images. The infrared images were obtained by automatically processing the radiometric data to remove thermal interferences, segment the RoI, enhance false-color contrast, and for multimodal co-registration under a controlled environment and a ∆T < 2.6% between the RoI and thermal interferences. The geometric verification accuracy was 77% ± 2%. Moreover, a normalized error was adjusted per sample based on a linear model to compensate for the curvature emissivity (error ≈ 10% near to 90°). The 3D models were displayed with temperature information and interaction controls to observe any point of view. The temperature sidebar values were assigned with information retrieved only from the RoI. The results have proven the feasibility of the 3D multimodal construction to be used as a promising tool in the diagnosis of diabetic foot.

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References
1.
Ring E, Ammer K, Jung A, Murawski P, Wiecek B, Zuber J . Standardization of infrared imaging. Conf Proc IEEE Eng Med Biol Soc. 2007; 2004:1183-5. DOI: 10.1109/IEMBS.2004.1403378. View

2.
Cheng T, Deng D, Herman C . CURVATURE EFFECT QUANTIFICATION FOR IN-VIVO IR THERMOGRAPHY. Int Mech Eng Congress Expo. 2014; 2. PMC: 3874242. DOI: 10.1115/IMECE2012-88105. View

3.
Short D, Zgonis T . Medical Imaging in Differentiating the Diabetic Charcot Foot from Osteomyelitis. Clin Podiatr Med Surg. 2016; 34(1):9-14. DOI: 10.1016/j.cpm.2016.07.002. View

4.
Wijlens A, Holloway S, Bus S, van Netten J . An explorative study on the validity of various definitions of a 2·2°C temperature threshold as warning signal for impending diabetic foot ulceration. Int Wound J. 2017; 14(6):1346-1351. PMC: 7949930. DOI: 10.1111/iwj.12811. View

5.
van Netten J, van Baal J, Liu C, van der Heijden F, Bus S . Infrared thermal imaging for automated detection of diabetic foot complications. J Diabetes Sci Technol. 2013; 7(5):1122-9. PMC: 3876354. DOI: 10.1177/193229681300700504. View