Pupil Localization for Ophthalmic Diagnosis Using Anchor Ellipse Regression

Horng-Horng Lin, Zheng-Yi Li,Min-Hsiu Shih,Yung-Nien Sun, Ting-Li Shen

2019 16th International Conference on Machine Vision Applications (MVA)(2019)

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摘要
Recent developments of deep neural networks, such as Mask R-CNN, have shown significant advances in simultaneous object detection and segmentation. We thus apply deep learning to pupil localization for ophthalmic diagnosis and propose a novel anchor ellipse regression approach based on region proposal network and Mask R-CNN for detecting pupils, estimating pupil shape parameters, and segmenting pupil regions at the same time in infrared images. This new extension of anchor ellipse regression for Mask R-CNN is demonstrated to be effective in size and rotation estimations of elliptical objects, as well as in object detections and segmentations, by experiments. Temporal pupil size estimations by using the proposed approach for normal and abnormal subjects give meaningful indices of pupil size changes for ophthalmic diagnosis.
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关键词
anchor ellipse regression approach,pupil size changes,temporal pupil size estimations,segmentations,object detections,elliptical objects,rotation estimations,segmenting pupil regions,pupil shape parameters,detecting pupils,region proposal network,deep learning,simultaneous object detection,Mask R-CNN,deep neural networks,pupil localization,ophthalmic diagnosis
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