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Neural Network Molecule: a Solution of the Inverse Biometry Problem through Software Support of Quantum Superposition on Outputs of the Network of Artificial Neurons

机译:神经网络分子:通过对人工神经元网络输出的量子叠加的软件支持,解决生物识别逆问题

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Introduction: The aim of the study is to accelerate the solution of neural network biometrics inverse problem on an ordinary desktop computer. Materials and Methods: To speed up the calculations, the artificial neural network is introduced into the dynamic mode of “jittering” of the states of all 256 output bits. At the same time, too many output states of the neural network are logarithmically folded by transitioning to the Hamming distance space between the code of the image “Own” and the codes of the images “Alien”. From the database of images of “Alien” 2.5 % of the most similar images are selected. In the next generation, 97.5 % of the discarded images are restored with GOST R 52633.2-2010 procedures by crossing parent images and obtaining descendant images from them. Results: Over a period of about 10 minutes, 60 generations of directed search for the solution of the inverse problem can be realized that allows inversing matrices of neural network functionals of dimension 416 inputs to 256 outputs with restoration of up to 97 % information on unknown biometric parameters of the image “Own”. Discussion and Conclusions: Supporting for 10 minutes of computer time the 256 qubit quantum superposition allows on a conventional computer to bypass the actual infinity of analyzed states in 5050 (50 to 50) times more than the same computer could process realizing the usual calculations. The increase in the length of the supported quantum superposition by 40 qubits is equivalent to increasing the processor clock speed by about a billion times. It is for this reason that it is more profitable to increase the number of quantum superpositions supported by the software emulator in comparison with the creation of a more powerful processor.
机译:简介:研究的目的是加快在普通台式计算机上解决神经网络生物识别逆问题的速度。资料和方法:为了加快计算速度,将人工神经网络引入了“动态抖动”所有256个输出位状态的动态模式。同时,通过转换到图像“自己”的代码和图像“外星人”的代码之间的汉明距离空间,神经网络的太多输出状态被对数折叠。从“外星人”的图像数据库中,选择2.5%的最相似图像。在下一代中,通过交叉父映像并从中获取后代映像,按照GOST R 52633.2-2010程序恢复了97.5%的废弃映像。结果:在大约10分钟的时间里,可以实现60代针对反问题解决方案的定向搜索,该搜索允许将416维输入的神经网络功能矩阵逆转为256路输出,最多可恢复97%的未知信息图像“自己”的生物特征参数。讨论和结论:256量子位量子叠加支持10分钟的计算机时间,使传统计算机可以比同一台计算机处理实现常规计算多5050(50至50)倍的被分析状态的实际无穷大。支持的量子叠加的长度增加40个量子位,相当于将处理器时钟速度提高了大约十亿倍。出于这个原因,与创建功能更强大的处理器相比,增加软件仿真器支持的量子叠加数量更为有利。

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