Mobile Application Based Cataract Detection System

作者: Vaibhav Agarwal , Vaibhav Gupta , Vivasvan Manasvi Vashisht , Kiran Sharma , Neetu Sharma

DOI: 10.1109/ICOEI.2019.8862774

关键词:

摘要: Cataract is one of the most common diseases that experienced by human beings when they grow old. a situation where we experience formation cloud on lens our eyes. This often leads to decrease in vision and impairment. The developing speed cataract not very fast. It slow process. can affect single or both main symptoms this disease shows up are blurry vision, faded colors, trouble while seeing bright light, etc. these result doing many activities. 33% people worldwide suffering from disease. Now detection tedious task. Most who have consult doctor order detect presence process time-consuming costly as well. In paper, method proposed implemented, smartphone based android application developed using methodology be used an individual's eye. upon Android architecture only phones. Machine learning image processing techniques develop methodology. system has been trained number data sets improve its accuracy resulted successful completion research.

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