使用深度卷积神经网络分层训练的手写印地语字符识别

Pub Date : 2020-10-14 DOI:10.47747/ijisi.v1i1.77
Abhishek Mehta, S. Desai, A. Chaturvedi
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引用次数: 0

摘要

目前,人工书写的字符识别技术正受到科学家们的关注,因为它有可能应用于帮助眼花缭乱的客户创新、人机协作、商业报告的程序化信息通道等方面。在这项工作中,我们提出了一种策略,利用深度卷积神经组织(DCNN)来感知转录的Devanagari字符,这是深度学习网络中正在进行的程序之一。我们对ISI (information Sharing Index)提供的ISIDCHAR信息库、Kolkata信息库和V2DMDCHAR信息库与DCNN的六种不同结构进行了测试,以评估展览,并进一步研究了最近创建的六种多功能倾斜策略的使用情况。采用了一种分层的DCNN方法,使识别准确率达到最高,并获得了更快的结合率。分层制备DCNN的结果与高质量高光和标准DCNN的浅层策略的结果有很大的相关性
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Handwritten Hindi Character Recognition Using Layer-Wise Training of Deep Convolutional Neural Networks
Manually written character acknowledgment is as of now getting the consideration of scientists in view of potential applications in helping innovation for dazzle and outwardly hindered clients, human–robot collaboration, programmed information passage for business reports, and so on. In this work, we propose a strategy to perceive transcribed Devanagari characters utilizing profound convolutional neural organizations (DCNN) which are one of the ongoing procedures embraced from the profound learning network. We tested the ISIDCHAR information base gave by (Information Sharing Index) ISI, Kolkata and V2DMDCHAR information base with six distinct structures of DCNN to assess the exhibition and furthermore research the utilization of six as of late created versatile inclination strategies. A layer-wise method of DCNN has been utilized that assisted with accomplishing the most noteworthy acknowledgment exactness and furthermore get a quicker union rate. The consequences of layer-wise-prepared DCNN are great in correlation with those accomplished by a shallow strategy of high quality highlights and standard DCNN
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