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The Human Eye Pupil Detection System Using BAT Optimized Deep Learning Architecture 被引量:1
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作者 S.Navaneethan P.Siva Satya Sreedhar +1 位作者 S.Padmakala c.senthilkumar 《Computer Systems Science & Engineering》 SCIE EI 2023年第7期125-135,共11页
The pupil recognition method is helpful in many real-time systems,including ophthalmology testing devices,wheelchair assistance,and so on.The pupil detection system is a very difficult process in a wide range of datas... The pupil recognition method is helpful in many real-time systems,including ophthalmology testing devices,wheelchair assistance,and so on.The pupil detection system is a very difficult process in a wide range of datasets due to problems caused by varying pupil size,occlusion of eyelids,and eyelashes.Deep Convolutional Neural Networks(DCNN)are being used in pupil recognition systems and have shown promising results in terms of accuracy.To improve accuracy and cope with larger datasets,this research work proposes BOC(BAT Optimized CNN)-IrisNet,which consists of optimizing input weights and hidden layers of DCNN using the evolutionary BAT algorithm to efficiently find the human eye pupil region.The proposed method is based on very deep architecture and many tricks from recently developed popular CNNs.Experiment results show that the BOC-IrisNet proposal can efficiently model iris microstructures and provides a stable discriminating iris representation that is lightweight,easy to implement,and of cutting-edge accuracy.Finally,the region-based black box method for determining pupil center coordinates was introduced.The proposed architecture was tested using various IRIS databases,including the CASIA(Chinese academy of the scientific research institute of automation)Iris V4 dataset,which has 99.5%sensitivity and 99.75%accuracy,and the IIT(Indian Institute of Technology)Delhi dataset,which has 99.35%specificity and MMU(Multimedia University)99.45%accuracy,which is higher than the existing architectures. 展开更多
关键词 BAT algorithm IRIS datasets DCNN pupil detection black box method
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基于需求分类遗传算法的Al/15% SiC_p复合材料电化学加工工艺参数的优化(英文) 被引量:2
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作者 c.senthilkumar G.GANESAN R.KARTHIKEYAN 《Transactions of Nonferrous Metals Society of China》 SCIE EI CAS CSCD 2011年第10期2294-2300,共7页
电化学加工(ECM)是一种重要的非传统加工工艺,主要用于加工难加工材料和错综复杂的型材。作为一个复杂的过程,很难确定最优参数去改善切削性能。金属去除率和表面粗糙度是最重要的输出参数,决定切削性能。由于切削参数对金属去除率和表... 电化学加工(ECM)是一种重要的非传统加工工艺,主要用于加工难加工材料和错综复杂的型材。作为一个复杂的过程,很难确定最优参数去改善切削性能。金属去除率和表面粗糙度是最重要的输出参数,决定切削性能。由于切削参数对金属去除率和表面粗糙度的影响不一致,从而没有简单的切削参数的最佳组合。用多元回归模型来表示输出与输入变量之间的关系,并用基于需求分类遗传算法(NSGA-II)的多目标优化方法来优化ECM过程,得到一个需求解集。 展开更多
关键词 电化学加工 金属去除率 表面粗糙度 需求分类遗传算法(NSGA-II)
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