{"title":"基于加权平均集成学习的智能虹膜分类","authors":"Aditi Arora, Aanchal Gupta, Bhavya Jindal, Gaurish Gupta","doi":"10.1109/ICDT57929.2023.10151036","DOIUrl":null,"url":null,"abstract":"Developing a higher-level security system for iden- tification or authentication has long been an active research subject in many fields. Traditional security systems utilize a key or a password to secure a process or a product, whereas bio metric security systems use a person’s physical or behavioral attributes. Iris patterns play a significant role in a number of potential recognition or authentication applications because of their uniqueness, universality, dependability, and stability. The use of iris recognition techniques in bio metric identification and authentication systems has increased significantly. In this work, a novel approach for classification of iris is presented, making it simple for anybody to apply this technology. This model allows for the usage of any eye image and only selects photos that pass the model’s internal filters. Besides, this study provides iris identification model that starts with eye detection and ends with iris image recognition. In addition, a method for iris classification is presented in this study that combines Transfer learning and Convolutional Neural Networks (CNNs) algorithms using Ensemble learning. The automatic segmentation technique for iris detection uses Hough Transform and is capable of localizing the pupil and iris region, as well as obstructing eyelids, eyelashes, and reflections. To overcome the image irregularities, the iris region is extracted and then extracted iris is converted into rectangular block using Normalization. In this paper, a weighted ensemble technique is proposed that demonstrates iris classification which is made by combining the weighted average sum of the accuracy attained by various classifiers. This model is trained and tested on well- known iris datasets: Ubiris Version 2 (part1) and Ubiris Version 2 (part2), Casia Iris Interval. The paper resulted in the accuracy of the proposed system of Ensemble Learning on various epochs stating that the accuracy is directly dependent on the number of epochs as on Casia Iris Interval Dataset, the accuracy of the Ensemble model at epoch 10 (77.86%), epoch 30 (83.79%), epoch 50 (86.00%) and epoch 100 (87.24%) which is increasing as number of epochs increases. The paper also proves that the performance of the new system is better than the other base models. According to one of the dataset, Casia Iris Interval dataset, the proposed Ensemble Learning model’s accuracy on 100 epoch was 87.24%, which is significantly higher than the accuracy of the other base models, including DenseNet121 (70.88%), MobileNet (86.51%), InceptionV3 (63.61%), InceptionResNetV2 (34.09%), Xception (68.45%), and CNN (4.07%) respectively.","PeriodicalId":266681,"journal":{"name":"2023 International Conference on Disruptive Technologies (ICDT)","volume":"51 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-05-11","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Smart Iris Classification Using Weighted Average Ensemble Learning\",\"authors\":\"Aditi Arora, Aanchal Gupta, Bhavya Jindal, Gaurish Gupta\",\"doi\":\"10.1109/ICDT57929.2023.10151036\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Developing a higher-level security system for iden- tification or authentication has long been an active research subject in many fields. Traditional security systems utilize a key or a password to secure a process or a product, whereas bio metric security systems use a person’s physical or behavioral attributes. Iris patterns play a significant role in a number of potential recognition or authentication applications because of their uniqueness, universality, dependability, and stability. The use of iris recognition techniques in bio metric identification and authentication systems has increased significantly. In this work, a novel approach for classification of iris is presented, making it simple for anybody to apply this technology. This model allows for the usage of any eye image and only selects photos that pass the model’s internal filters. Besides, this study provides iris identification model that starts with eye detection and ends with iris image recognition. In addition, a method for iris classification is presented in this study that combines Transfer learning and Convolutional Neural Networks (CNNs) algorithms using Ensemble learning. The automatic segmentation technique for iris detection uses Hough Transform and is capable of localizing the pupil and iris region, as well as obstructing eyelids, eyelashes, and reflections. To overcome the image irregularities, the iris region is extracted and then extracted iris is converted into rectangular block using Normalization. In this paper, a weighted ensemble technique is proposed that demonstrates iris classification which is made by combining the weighted average sum of the accuracy attained by various classifiers. This model is trained and tested on well- known iris datasets: Ubiris Version 2 (part1) and Ubiris Version 2 (part2), Casia Iris Interval. The paper resulted in the accuracy of the proposed system of Ensemble Learning on various epochs stating that the accuracy is directly dependent on the number of epochs as on Casia Iris Interval Dataset, the accuracy of the Ensemble model at epoch 10 (77.86%), epoch 30 (83.79%), epoch 50 (86.00%) and epoch 100 (87.24%) which is increasing as number of epochs increases. The paper also proves that the performance of the new system is better than the other base models. 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引用次数: 0
摘要
长期以来,开发更高层次的身份识别或认证安全系统一直是许多领域的活跃研究课题。传统的安全系统使用密钥或密码来保护过程或产品,而生物识别安全系统使用人的物理或行为属性。由于其唯一性、通用性、可靠性和稳定性,虹膜模式在许多潜在的识别或身份验证应用程序中发挥着重要作用。虹膜识别技术在生物识别和认证系统中的应用已经显著增加。本文提出了一种新颖的虹膜分类方法,使其易于应用。这个模型允许使用任何眼睛图像,并且只选择通过模型内部过滤器的照片。此外,本研究还提供了从眼部检测开始到虹膜图像识别结束的虹膜识别模型。此外,本研究提出了一种结合迁移学习和卷积神经网络(cnn)算法的虹膜分类方法。虹膜检测的自动分割技术采用霍夫变换,能够对瞳孔和虹膜区域进行定位,也能够遮挡眼睑、睫毛和反射。为了克服图像的不规则性,首先提取虹膜区域,然后用归一化方法将提取的虹膜转换为矩形块。本文提出了一种加权集成技术,该技术通过将各种分类器的分类精度加权平均相加来进行虹膜分类。该模型在著名的鸢尾数据集Ubiris Version 2 (part1)和Ubiris Version 2 (part2), Casia iris Interval上进行了训练和测试。结果表明,在Casia Iris区间数据集上,集成学习系统在不同时期的准确率直接依赖于时期数,随着时期数的增加,集成模型在时期10(77.86%)、时期30(83.79%)、时期50(86.00%)和时期100(87.24%)的准确率呈上升趋势。本文还证明了新系统的性能优于其他基本模型。根据其中一个数据集Casia Iris Interval数据集,所提出的集成学习模型在100 epoch上的准确率为87.24%,显著高于其他基础模型,包括DenseNet121(70.88%)、MobileNet(86.51%)、InceptionV3(63.61%)、InceptionResNetV2(34.09%)、Xception(68.45%)和CNN(4.07%)。
Smart Iris Classification Using Weighted Average Ensemble Learning
Developing a higher-level security system for iden- tification or authentication has long been an active research subject in many fields. Traditional security systems utilize a key or a password to secure a process or a product, whereas bio metric security systems use a person’s physical or behavioral attributes. Iris patterns play a significant role in a number of potential recognition or authentication applications because of their uniqueness, universality, dependability, and stability. The use of iris recognition techniques in bio metric identification and authentication systems has increased significantly. In this work, a novel approach for classification of iris is presented, making it simple for anybody to apply this technology. This model allows for the usage of any eye image and only selects photos that pass the model’s internal filters. Besides, this study provides iris identification model that starts with eye detection and ends with iris image recognition. In addition, a method for iris classification is presented in this study that combines Transfer learning and Convolutional Neural Networks (CNNs) algorithms using Ensemble learning. The automatic segmentation technique for iris detection uses Hough Transform and is capable of localizing the pupil and iris region, as well as obstructing eyelids, eyelashes, and reflections. To overcome the image irregularities, the iris region is extracted and then extracted iris is converted into rectangular block using Normalization. In this paper, a weighted ensemble technique is proposed that demonstrates iris classification which is made by combining the weighted average sum of the accuracy attained by various classifiers. This model is trained and tested on well- known iris datasets: Ubiris Version 2 (part1) and Ubiris Version 2 (part2), Casia Iris Interval. The paper resulted in the accuracy of the proposed system of Ensemble Learning on various epochs stating that the accuracy is directly dependent on the number of epochs as on Casia Iris Interval Dataset, the accuracy of the Ensemble model at epoch 10 (77.86%), epoch 30 (83.79%), epoch 50 (86.00%) and epoch 100 (87.24%) which is increasing as number of epochs increases. The paper also proves that the performance of the new system is better than the other base models. According to one of the dataset, Casia Iris Interval dataset, the proposed Ensemble Learning model’s accuracy on 100 epoch was 87.24%, which is significantly higher than the accuracy of the other base models, including DenseNet121 (70.88%), MobileNet (86.51%), InceptionV3 (63.61%), InceptionResNetV2 (34.09%), Xception (68.45%), and CNN (4.07%) respectively.