The main objective of this project is to classify the state of eyes using ResNet101, DenseNet201, CNN techniques.
Iris recognition refers to the automated process of individual recognition based on the patterns in their irises. Due to its uniqueness, it is a common modality used in biometric recognition. With a technique pioneered by Daugman, it was shown that it enables recognition with very low false match rates. However, existing approaches still offer room for improvement in terms of accuracy. To address this, we adapt the pipeline defined by Daugman using convolutional neural networks to function as feature extractors and train the convolutional neural networks on a part of Iris Eyes open & closed eyes dataset for closed set prediction. Trained models are then used for feature extraction, enabling us to perform open set recognition. With DenseNet-201 we achieve recognition accuracy in closed set recognition accuracy in open set recognition, achieving state-ofthe- art results.
Keywords— ResNet101, DenseNet201, CNN.
NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.

H/W Specifications:
S/W Specifications:
Practical exposure to
· Hardware and software tools
· Solution providing for real time problems
· Working with team/individual
· Work on creative ideas
· Testing techniques
· Error correction mechanisms
· What type of technology versions is used?
· Working of Tensor Flow
· Implementation of Deep Learning techniques
· Working of CNN algorithm
· Working of Transfer Learning methods
· Building of model creations
· Scope of project
· Applications of the project
· About Python language
· About Deep Learning Frameworks
· Use of Data Science