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Main Authors: Huang, Wei-Lun, Liu, Joshua, Tashayyod, Davood, Kang, Jun, Gandjbakhche, Amir, Kazhdan, Misha, Armand, Mehran
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.16228
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author Huang, Wei-Lun
Liu, Joshua
Tashayyod, Davood
Kang, Jun
Gandjbakhche, Amir
Kazhdan, Misha
Armand, Mehran
author_facet Huang, Wei-Lun
Liu, Joshua
Tashayyod, Davood
Kang, Jun
Gandjbakhche, Amir
Kazhdan, Misha
Armand, Mehran
contents Total Body Photography (TBP) is becoming a useful screening tool for patients at high risk for skin cancer. While much progress has been made, existing TBP systems can be further improved for automatic detection and analysis of suspicious skin lesions, which is in part related to the resolution and sharpness of acquired images. This paper proposes a novel shape-aware TBP system automatically capturing full-body images while optimizing image quality in terms of resolution and sharpness over the body surface. The system uses depth and RGB cameras mounted on a 360-degree rotary beam, along with 3D body shape estimation and an in-focus surface optimization method to select the optimal focus distance for each camera pose. This allows for optimizing the focused coverage over the complex 3D geometry of the human body given the calibrated camera poses. We evaluate the effectiveness of the system in capturing high-fidelity body images. The proposed system achieves an average resolution of 0.068 mm/pixel and 0.0566 mm/pixel with approximately 85% and 95% of surface area in-focus, evaluated on simulation data of diverse body shapes and poses as well as a real scan of a mannequin respectively. Furthermore, the proposed shape-aware focus method outperforms existing focus protocols (e.g. auto-focus). We believe the high-fidelity imaging enabled by the proposed system will improve automated skin lesion analysis for skin cancer screening.
format Preprint
id arxiv_https___arxiv_org_abs_2505_16228
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Shape-Aware Total Body Photography System for In-focus Surface Coverage Optimization
Huang, Wei-Lun
Liu, Joshua
Tashayyod, Davood
Kang, Jun
Gandjbakhche, Amir
Kazhdan, Misha
Armand, Mehran
Computer Vision and Pattern Recognition
Total Body Photography (TBP) is becoming a useful screening tool for patients at high risk for skin cancer. While much progress has been made, existing TBP systems can be further improved for automatic detection and analysis of suspicious skin lesions, which is in part related to the resolution and sharpness of acquired images. This paper proposes a novel shape-aware TBP system automatically capturing full-body images while optimizing image quality in terms of resolution and sharpness over the body surface. The system uses depth and RGB cameras mounted on a 360-degree rotary beam, along with 3D body shape estimation and an in-focus surface optimization method to select the optimal focus distance for each camera pose. This allows for optimizing the focused coverage over the complex 3D geometry of the human body given the calibrated camera poses. We evaluate the effectiveness of the system in capturing high-fidelity body images. The proposed system achieves an average resolution of 0.068 mm/pixel and 0.0566 mm/pixel with approximately 85% and 95% of surface area in-focus, evaluated on simulation data of diverse body shapes and poses as well as a real scan of a mannequin respectively. Furthermore, the proposed shape-aware focus method outperforms existing focus protocols (e.g. auto-focus). We believe the high-fidelity imaging enabled by the proposed system will improve automated skin lesion analysis for skin cancer screening.
title A Shape-Aware Total Body Photography System for In-focus Surface Coverage Optimization
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2505.16228