Continuous Pupillography: A Case for Visual Health Ecosystem
- URL: http://arxiv.org/abs/2410.12303v1
- Date: Wed, 16 Oct 2024 07:05:06 GMT
- Title: Continuous Pupillography: A Case for Visual Health Ecosystem
- Authors: Usama Younus, Nirupam Roy,
- Abstract summary: This article aims to cover pupillography, and its potential use in a number of ophthalmological diagnostic applications in biomedical space.
We try to make a case for a health ecosystem that revolves around continuous eye monitoring.
- Score: 0.15193212081459279
- License:
- Abstract: This article aims to cover pupillography, and its potential use in a number of ophthalmological diagnostic applications in biomedical space. With the ever-increasing incorporation of technology within our daily lives and an ever-growing active research into smart devices and technologies, we try to make a case for a health ecosystem that revolves around continuous eye monitoring. We tend to summarize the design constraints & requirements for an IoT-based continuous pupil detection system, with an attempt at developing a pipeline for wearable pupillographic device, while comparing two compact mini-camera modules currently available in the market. We use a light algorithm that can be directly adopted to current micro-controllers, and share our results for different lighting conditions, and scenarios. Lastly, we present our findings, along with an analysis on the challenges faced and a way ahead towards successfully building this ecosystem.
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