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Hauptverfasser: Shah, Vijul, Moser, Brian B., Watanabe, Ko, Dengel, Andreas
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2408.10397
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author Shah, Vijul
Moser, Brian B.
Watanabe, Ko
Dengel, Andreas
author_facet Shah, Vijul
Moser, Brian B.
Watanabe, Ko
Dengel, Andreas
contents Capturing pupil diameter is essential for assessing psychological and physiological states such as stress levels and cognitive load. However, the low resolution of images in eye datasets often hampers precise measurement. This study evaluates the impact of various upscaling methods, ranging from bicubic interpolation to advanced super-resolution, on pupil diameter predictions. We compare several pre-trained methods, including CodeFormer, GFPGAN, Real-ESRGAN, HAT, and SRResNet. Our findings suggest that pupil diameter prediction models trained on upscaled datasets are highly sensitive to the selected upscaling method and scale. Our results demonstrate that upscaling methods consistently enhance the accuracy of pupil diameter prediction models, highlighting the importance of upscaling in pupilometry. Overall, our work provides valuable insights for selecting upscaling techniques, paving the way for more accurate assessments in psychological and physiological research.
format Preprint
id arxiv_https___arxiv_org_abs_2408_10397
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Webcam-based Pupil Diameter Prediction Benefits from Upscaling
Shah, Vijul
Moser, Brian B.
Watanabe, Ko
Dengel, Andreas
Computer Vision and Pattern Recognition
Artificial Intelligence
Multimedia
Capturing pupil diameter is essential for assessing psychological and physiological states such as stress levels and cognitive load. However, the low resolution of images in eye datasets often hampers precise measurement. This study evaluates the impact of various upscaling methods, ranging from bicubic interpolation to advanced super-resolution, on pupil diameter predictions. We compare several pre-trained methods, including CodeFormer, GFPGAN, Real-ESRGAN, HAT, and SRResNet. Our findings suggest that pupil diameter prediction models trained on upscaled datasets are highly sensitive to the selected upscaling method and scale. Our results demonstrate that upscaling methods consistently enhance the accuracy of pupil diameter prediction models, highlighting the importance of upscaling in pupilometry. Overall, our work provides valuable insights for selecting upscaling techniques, paving the way for more accurate assessments in psychological and physiological research.
title Webcam-based Pupil Diameter Prediction Benefits from Upscaling
topic Computer Vision and Pattern Recognition
Artificial Intelligence
Multimedia
url https://arxiv.org/abs/2408.10397