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Titlebook: Human Face Recognition Using Third-Order Synthetic Neural Networks; Okechukwu A. Uwechue,Abhijit S. Pandya Book 1997 Springer Science+Busi

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書目名稱Human Face Recognition Using Third-Order Synthetic Neural Networks
編輯Okechukwu A. Uwechue,Abhijit S. Pandya
視頻videohttp://file.papertrans.cn/430/429153/429153.mp4
叢書名稱The Springer International Series in Engineering and Computer Science
圖書封面Titlebook: Human Face Recognition Using Third-Order Synthetic Neural Networks;  Okechukwu A. Uwechue,Abhijit S. Pandya Book 1997 Springer Science+Busi
描述.Human Face Recognition Using Third-Order Synthetic NeuralNetworks. explores the viability of the application of.High-order. synthetic neural network technology totransformation-invariant recognition of complex visual patterns.High-order networks require little training data (hence, shorttraining times) and have been used to perform transformation-invariantrecognition of relatively simple visual patterns, achieving very highrecognition rates. The successful results of these methods providedinspiration to address more practical problems which have.grayscale. as opposed to .binary. patterns (e.g.,alphanumeric characters, aircraft silhouettes) and are also morecomplex in nature as opposed to purely edge-extracted images -human face recognition .is. such a problem. ..Human Face Recognition Using Third-Order Synthetic NeuralNetworks. serves as an excellent reference for researchers andprofessionals working on applying neural network technology to therecognition of complex visual patterns.
出版日期Book 1997
關(guān)鍵詞neural networks; pattern recognition; training
版次1
doihttps://doi.org/10.1007/978-1-4615-4092-2
isbn_softcover978-1-4613-6832-8
isbn_ebook978-1-4615-4092-2Series ISSN 0893-3405
issn_series 0893-3405
copyrightSpringer Science+Business Media New York 1997
The information of publication is updating

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Introduction,ded inspiration to address more practical problems which have . as opposed to . patterns (e.g. alphanumeric characters, aircraft silhouettes) and are also more complex in nature as opposed to purely edge-extracted images - human face recognition . such a problem.
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Implementation of Invariances,. T1 and t1 are similar triangles, T2 and t2 are similar, whereas t1 and t2 are dissimilar. For example, T1 is a scaled and rotated version of t1. T3 is dissimilar to Tl and t1 as it is a scaled, lateral inversion therefore the sequence of internal angles would not be the same. T4 is dissimilar to all of the other triangles.
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Facial Pattern Recognition,nd, unlike Fourier descriptors, do not require closed boundaries. Moment invariants were first proposed by Hu [HU62]_in 1961 using non-linear combinations of regular(geometric) moments which are invariant under scale, translation, and rotation image transformations.
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Network Training, presents input patterns to the network, compares the resulting outputs with those desired, and then adjusts the network weights accordingly in order to reduce the difference. Unsupervised training requires no’ teacher’: input patterns are applied and the network selforganises by updating its weights according to a pre-defined algorithm.
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